UIUC同学Jia-Bin Huang收集的计算机视觉代码合集(ZZ)

2023-11-09

转自:http://www.cnblogs.com/idaidai/archive/2012/03/01/2375800.html

 

 

UIUC的Jia-Bin Huang同学收集了很多计算机视觉方面的代码,链接如下:

248 item

Topic Name Reference Link
Feature Detection,Feature Extraction, and Action Recognition Space-Time Interest Points (STIP) I. Laptev, On Space-Time Interest Points, IJCV, 2005 and I. Laptev and T. Lindeberg, On Space-Time Interest Points, IJCV 2005 http://www.irisa.fr/vista/Equipe/People/Laptev/download/stip-1.1-winlinux.zip andhttp://www.nada.kth.se/cvap/abstracts/cvap284.html
Action Recognition 3D Gradients (HOG3D) A. Klaser, M. Marszałek, and C. Schmid, BMVC, 2008. http://lear.inrialpes.fr/people/klaeser/research_hog3d
Action Recognition Dense Trajectories Video Description H. Wang and A. Klaser and C. Schmid and C.- L. Liu, Action Recognition by Dense Trajectories, CVPR, 2011 http://lear.inrialpes.fr/people/wang/dense_trajectories
Alpha Matting Spectral Matting A. Levin, A. Rav-Acha, D. Lischinski. Spectral Matting. PAMI 2008 http://www.vision.huji.ac.il/SpectralMatting/
Alpha Matting Shared Matting E. S. L. Gastal and M. M. Oliveira, Computer Graphics Forum, 2010 http://www.inf.ufrgs.br/~eslgastal/SharedMatting/
Alpha Matting Bayesian Matting Y. Y. Chuang, B. Curless, D. H. Salesin, and R. Szeliski, A Bayesian Approach to Digital Matting, CVPR, 2001 http://www1.idc.ac.il/toky/CompPhoto-09/Projects/Stud_projects/Miki/index.html
Alpha Matting Closed Form Matting A. Levin D. Lischinski and Y. Weiss. A Closed Form Solution to Natural Image Matting, PAMI 2008. http://people.csail.mit.edu/alevin/matting.tar.gz
Alpha Matting Learning-based Matting Y. Zheng and C. Kambhamettu, Learning Based Digital Matting, ICCV 2009 http://www.mathworks.com/matlabcentral/fileexchange/31412
Camera Calibration Camera Calibration Toolbox for Matlab http://www.vision.caltech.edu/bouguetj/calib_doc/htmls/ref.html http://www.vision.caltech.edu/bouguetj/calib_doc/
Camera Calibration EasyCamCalib J. Barreto, J. Roquette, P. Sturm, and F. Fonseca, Automatic camera calibration applied to medical endoscopy, BMVC, 2009 http://arthronav.isr.uc.pt/easycamcalib/
Camera Calibration Epipolar Geometry Toolbox G.L. Mariottini, D. Prattichizzo, EGT: a Toolbox for Multiple View Geometry and Visual Servoing, IEEE Robotics & Automation Magazine, 2005 http://egt.dii.unisi.it/
Clustering Spectral Clustering - UW Project   http://www.stat.washington.edu/spectral/
Clustering Spectral Clustering - UCSD Project   http://vision.ucsd.edu/~sagarwal/spectral-0.2.tgz
Clustering Self-Tuning Spectral Clustering   http://www.vision.caltech.edu/lihi/Demos/SelfTuningClustering.html
Clustering K-Means - Oxford Code   http://www.cs.ucf.edu/~vision/Code/vggkmeans.zip
Clustering K-Means - VLFeat   http://www.vlfeat.org/
Common Visual Pattern Discovery Sketching the Common S. Bagon, O. Brostovsky, M. Galun and M. Irani, Detecting and Sketching the Common, CVPR 2010 http://www.wisdom.weizmann.ac.il/~bagon/matlab_code/SketchCommonCVPR10_v1.1.tar.gz
Common Visual Pattern Discovery Common Visual Pattern Discovery via Spatially Coherent Correspondences H. Liu, S. Yan, "Common Visual Pattern Discovery via Spatially Coherent Correspondences", CVPR 2010 https://sites.google.com/site/lhrbss/home/papers/SimplifiedCode.zip?attredirects=0
Density Estimation Kernel Density Estimation Toolbox   http://www.ics.uci.edu/~ihler/code/kde.html
Depth Sensor Kinect SDK http://www.microsoft.com/en-us/kinectforwindows/ http://www.microsoft.com/en-us/kinectforwindows/
Dimension Reduction ISOMAP   http://isomap.stanford.edu/
Dimension Reduction LLE   http://www.cs.nyu.edu/~roweis/lle/code.html
Dimension Reduction Laplacian Eigenmaps   http://www.cse.ohio-state.edu/~mbelkin/algorithms/Laplacian.tar
Dimension Reduction Diffusion maps   http://www.stat.cmu.edu/~annlee/software.htm
Dimension Reduction Dimensionality Reduction Toolbox   http://homepage.tudelft.nl/19j49/Matlab_Toolbox_for_Dimensionality_Reduction.html
Distance Metric Learning Matlab Toolkit for Distance Metric Learning   http://www.cs.cmu.edu/~liuy/distlearn.htm
Distance Transformation Distance Transforms of Sampled Functions   http://people.cs.uchicago.edu/~pff/dt/
Feature Detection Canny Edge Detection J. Canny, A Computational Approach To Edge Detection, PAMI, 1986 http://www.mathworks.com/help/toolbox/images/ref/edge.html
Feature Detection FAST Corner Detection E. Rosten and T. Drummond, Machine learning for high-speed corner detection, ECCV, 2006 http://www.edwardrosten.com/work/fast.html
Feature Detection Edge Foci Interest Points L. Zitnickand K. Ramnath, Edge Foci Interest Points, ICCV, 2011 http://research.microsoft.com/en-us/um/people/larryz/edgefoci/edge_foci.htm
Feature Detection Boundary Preserving Dense Local Regions J. Kim and K. Grauman, Boundary Preserving Dense Local Regions, CVPR 2011 http://vision.cs.utexas.edu/projects/bplr/bplr.html
Feature Extraction BRIEF: Binary Robust Independent Elementary Features M. Calonder, V. Lepetit, C. Strecha, P. Fua, BRIEF: Binary Robust Independent Elementary Features, ECCV 2010 http://cvlab.epfl.ch/research/detect/brief/
Feature Detection andFeature Extraction Scale-invariant feature transform (SIFT) - VLFeat D. Lowe. Distinctive Image Features from Scale-Invariant Keypoints, IJCV 2004. http://www.vlfeat.org/
Feature Detection andFeature Extraction Scale-invariant feature transform (SIFT) - Demo Software D. Lowe. Distinctive Image Features from Scale-Invariant Keypoints, IJCV 2004. http://www.cs.ubc.ca/~lowe/keypoints/
Feature Extraction Global and Efficient Self-Similarity T. Deselaers and V. Ferrari. Global and Efficient Self-Similarity for Object Classification and Detection. CVPR 2010and T. Deselaers, V. Ferrari, Global and Efficient Self-Similarity for Object Classification and Detection, CVPR 2010 http://www.vision.ee.ethz.ch/~calvin/gss/selfsim_release1.0.tgz
Feature Detection andFeature Extraction Affine-SIFT J.M. Morel and G.Yu, ASIFT, A new framework for fully affine invariant image comparison. SIAM Journal on Imaging Sciences, 2009 http://www.ipol.im/pub/algo/my_affine_sift/
Feature Detection andFeature Extraction Geometric Blur A. C. Berg, T. L. Berg, and J. Malik. Shape matching and object recognition using low distortion correspondences. CVPR, 2005 http://www.robots.ox.ac.uk/~vgg/software/MKL/
Feature Extraction PCA-SIFT Y. Ke and R. Sukthankar, PCA-SIFT: A More Distinctive Representation for Local Image Descriptors,CVPR, 2004 http://www.cs.cmu.edu/~yke/pcasift/
Feature Detection andFeature Extraction Scale-invariant feature transform (SIFT) - Library D. Lowe. Distinctive Image Features from Scale-Invariant Keypoints, IJCV 2004. http://blogs.oregonstate.edu/hess/code/sift/
Feature Detection andFeature Extraction Groups of Adjacent Contour Segments V. Ferrari, L. Fevrier, F. Jurie, and C. Schmid, Groups of Adjacent Contour Segments for Object Detection, PAMI, 2007 http://www.robots.ox.ac.uk/~vgg/share/ferrari/release-kas-v102.tgz
Feature Detection andFeature Extraction Speeded Up Robust Feature (SURF) - Matlab Wrapper H. Bay, T. Tuytelaars and L. V. Gool SURF: Speeded Up Robust Features, ECCV, 2006 http://www.maths.lth.se/matematiklth/personal/petter/surfmex.php
Feature Extraction Shape Context S. Belongie, J. Malik and J. Puzicha. Shape matching and object recognition using shape contexts, PAMI, 2002 http://www.eecs.berkeley.edu/Research/Projects/CS/vision/shape/sc_digits.html
Feature Detection andFeature Extraction Speeded Up Robust Feature (SURF) - Open SURF H. Bay, T. Tuytelaars and L. V. Gool SURF: Speeded Up Robust Features, ECCV, 2006 http://www.chrisevansdev.com/computer-vision-opensurf.html
Feature Detection andFeature Extraction Maximally stable extremal regions (MSER) J. Matas, O. Chum, M. Urba, and T. Pajdla. Robust wide baseline stereo from maximally stable extremal regions. BMVC, 2002 http://www.robots.ox.ac.uk/~vgg/research/affine/
Feature Extraction GIST Descriptor A. Oliva and A. Torralba. Modeling the shape of the scene: a holistic representation of the spatial envelope, IJCV, 2001 http://people.csail.mit.edu/torralba/code/spatialenvelope/
Feature Detection andFeature Extraction Color Descriptor K. E. A. van de Sande, T. Gevers and Cees G. M. Snoek, Evaluating Color Descriptors for Object and Scene Recognition, PAMI, 2010 http://koen.me/research/colordescriptors/
Feature Extraction Local Self-Similarity Descriptor E. Shechtman and M. Irani. Matching local self-similarities across images and videos, CVPR, 2007 http://www.robots.ox.ac.uk/~vgg/software/SelfSimilarity/
Feature Detection andFeature Extraction Maximally stable extremal regions (MSER) - VLFeat J. Matas, O. Chum, M. Urba, and T. Pajdla. Robust wide baseline stereo from maximally stable extremal regions. BMVC, 2002 http://www.vlfeat.org/
Feature Extraction Pyramids of Histograms of Oriented Gradients (PHOG) A. Bosch, A. Zisserman, and X. Munoz, Representing shape with a spatial pyramid kernel, CIVR, 2007 http://www.robots.ox.ac.uk/~vgg/research/caltech/phog/phog.zip
Feature Detection andFeature Extraction Affine Covariant Features T. Tuytelaars and K. Mikolajczyk, Local Invariant Feature Detectors: A Survey, Foundations and Trends in Computer Graphics and Vision, 2008 http://www.robots.ox.ac.uk/~vgg/research/affine/
Feature Extraction sRD-SIFT M. Lourenco, J. P. Barreto and A. Malti, Feature Detection and Matching in Images with Radial Distortion, ICRA 2010 http://arthronav.isr.uc.pt/~mlourenco/srdsift/index.html#
Graph Matching Reweighted Random Walks for Graph Matching M. Cho, J. Lee, and K. M. Lee, Reweighted Random Walks for Graph Matching, ECCV 2010 http://cv.snu.ac.kr/research/~RRWM/
Graph Matching Hyper-graph Matching via Reweighted Random Walks J. Lee, M. Cho, K. M. Lee. "Hyper-graph Matching via Reweighted Random Walks", CVPR 2011 http://cv.snu.ac.kr/research/~RRWHM/
Illumination, Reflectance, and Shadow Webcam Clip Art: Appearance and Illuminant Transfer from Time-lapse Sequences J-F. Lalonde, A. A. Efros, S. G. Narasimhan, Webcam Clip Art: Appearance and Illuminant Transfer from Time-lapse Sequences, SIGGRAPH Asia 2009 http://www.cs.cmu.edu/~jlalonde/software.html#skyModel
Illumination, Reflectance, and Shadow Ground shadow detection J.-F. Lalonde, A. A. Efros, S. G. Narasimhan, Detecting Ground Shadowsin Outdoor Consumer Photographs, ECCV 2010 http://www.jflalonde.org/software.html#shadowDetection
Illumination, Reflectance, and Shadow Shadow Detection using Paired Region R. Guo, Q. Dai and D. Hoiem, Single-Image Shadow Detection and Removal using Paired Regions, CVPR 2011 http://www.cs.illinois.edu/homes/guo29/projects/shadow.html
Illumination, Reflectance, and Shadow Real-time Specular Highlight Removal Q. Yang, S. Wang and N. Ahuja, Real-time Specular Highlight Removal Using Bilateral Filtering, ECCV 2010 http://www.cs.cityu.edu.hk/~qiyang/publications/code/eccv-10.zip
Illumination, Reflectance, and Shadow Estimating Natural Illumination from a Single Outdoor Image J-F. Lalonde, A. A. Efros, S. G. Narasimhan, Estimating Natural Illumination from a Single Outdoor Image , ICCV 2009 http://www.cs.cmu.edu/~jlalonde/software.html#skyModel
Illumination, Reflectance, and Shadow What Does the Sky Tell Us About the Camera? J-F. Lalonde, S. G. Narasimhan, A. A. Efros, What Does the Sky Tell Us About the Camera?, ECCV 2008 http://www.cs.cmu.edu/~jlalonde/software.html#skyModel
Image Classification Locality-constrained Linear Coding J. Wang, J. Yang, K. Yu, F. Lv, T. Huang, and Y. Gong. Locality-constrained Linear Coding for Image Classification, CVPR, 2010 http://www.ifp.illinois.edu/~jyang29/LLC.htm
Image Classification Sparse Coding for Image Classification J. Yang, K. Yu, Y. Gong, T. Huang, Linear Spatial Pyramid Matching using Sparse Coding for Image Classification, CVPR, 2009 http://www.ifp.illinois.edu/~jyang29/ScSPM.htm
Image Classification Texture Classification M. Varma and A. Zisserman, A statistical approach to texture classification from single images, IJCV2005 http://www.robots.ox.ac.uk/~vgg/research/texclass/index.html
Feature Matching andImage Classification The Pyramid Match: Efficient Matching for Retrieval and Recognition K. Grauman and T. Darrell. The Pyramid Match Kernel: Discriminative Classification with Sets of Image Features, ICCV 2005 http://www.cs.utexas.edu/~grauman/research/projects/pmk/pmk_projectpage.htm
Image Classification Spatial Pyramid Matching S. Lazebnik, C. Schmid, and J. Ponce. Beyond Bags of Features: Spatial Pyramid Matching for Recognizing Natural Scene Categories, CVPR 2006 http://www.cs.unc.edu/~lazebnik/research/SpatialPyramid.zip
Image Deblurring Radon Transform T. S. Cho, S. Paris, B. K. P. Horn, W. T. Freeman, Blur kernel estimation using the radon transform, CVPR 2011 http://people.csail.mit.edu/taegsang/Documents/RadonDeblurringCode.zip
Image Deblurring Analyzing spatially varying blur A. Chakrabarti, T. Zickler, and W. T. Freeman, Analyzing Spatially-varying Blur, CVPR 2010 http://www.eecs.harvard.edu/~ayanc/svblur/
Image Denoising,Image Super-resolution, and Image Deblurring Learning Models of Natural Image Patches D. Zoran and Y. Weiss, From Learning Models of Natural Image Patches to Whole Image Restoration, ICCV, 2011 http://www.cs.huji.ac.il/~daniez/
Image Deblurring Non-blind deblurring (and blind denoising) with integrated noise estimation U. Schmidt, K. Schelten, and S. Roth. Bayesian deblurring with integrated noise estimation, CVPR 2011 http://www.gris.tu-darmstadt.de/research/visinf/software/index.en.htm
Image Deblurring Eficient Marginal Likelihood Optimization in Blind Deconvolution A. Levin, Y. Weiss, F. Durand, W. T. Freeman. Efficient Marginal Likelihood Optimization in Blind Deconvolution, CVPR 2011 http://www.wisdom.weizmann.ac.il/~levina/papers/LevinEtalCVPR2011Code.zip
Image Deblurring Richardson-Lucy Deblurring for Scenes under Projective Motion Path Y.-W. Tai, P. Tan, M. S. Brown: Richardson-Lucy Deblurring for Scenes under Projective Motion Path, PAMI 2011 http://yuwing.kaist.ac.kr/projects/projectivedeblur/projectivedeblur_files/ProjectiveDeblur.zip
Image Denoising Sparsity-based Image Denoising W. Dong, X. Li, L. Zhang and G. Shi, Sparsity-based Image Denoising vis Dictionary Learning and Structural Clustering, CVPR, 2011 http://www.csee.wvu.edu/~xinl/CSR.html
Image Denoising K-SVD   http://www.cs.technion.ac.il/~ronrubin/Software/ksvdbox13.zip
Image Denoising Clustering-based Denoising P. Chatterjee and P. Milanfar, Clustering-based Denoising with Locally Learned Dictionaries (K-LLD), TIP, 2009 http://users.soe.ucsc.edu/~priyam/K-LLD/
Image Denoising BLS-GSM   http://decsai.ugr.es/~javier/denoise/
Image Denoising Field of Experts   http://www.cs.brown.edu/~roth/research/software.html
Image Denoising Non-local Means   http://dmi.uib.es/~abuades/codis/NLmeansfilter.m
Image Denoising What makes a good model of natural images ? Y. Weiss and W. T. Freeman, CVPR 2007 http://www.cs.huji.ac.il/~yweiss/BRFOE.zip
Image Denoising BM3D   http://www.cs.tut.fi/~foi/GCF-BM3D/
Image Denoising Kernel Regressions   http://www.soe.ucsc.edu/~htakeda/MatlabApp/KernelRegressionBasedImageProcessingToolBox_ver1-1beta.zip
Image Denoising Gaussian Field of Experts   http://www.cs.huji.ac.il/~yweiss/BRFOE.zip
Image Denoising Nonlocal means with cluster trees T. Brox, O. Kleinschmidt, D. Cremers, Efficient nonlocal means for denoising of textural patterns, TIP 2008 http://lmb.informatik.uni-freiburg.de/resources/binaries/nlmeans_brox_tip08Linux64.zip
Image Filtering GradientShop P. Bhat, C.L. Zitnick, M. Cohen, B. Curless, and J. Kim, GradientShop: A Gradient-Domain Optimization Framework for Image and Video Filtering, TOG 2010 http://grail.cs.washington.edu/projects/gradientshop/
Image Filtering Weighted Least Squares Filter Z. Farbman, R. Fattal, D. Lischinski, R. Szeliski, Edge-Preserving Decompositions for Multi-Scale Tone and Detail Manipulation, SIGGRAPH 2008 http://www.cs.huji.ac.il/~danix/epd/
Image Filtering Real-time O(1) Bilateral Filtering Q. Yang, K.-H. Tan and N. Ahuja, Real-time O(1) Bilateral Filtering, CVPR 2009 http://vision.ai.uiuc.edu/~qyang6/publications/code/qx_constant_time_bilateral_filter_ss.zip
Image Filtering Guided Image Filtering K. He, J. Sun, X. Tang, Guided Image Filtering, ECCV 2010 http://personal.ie.cuhk.edu.hk/~hkm007/eccv10/guided-filter-code-v1.rar
Image Filtering Fast Bilateral Filter S. Paris and F. Durand, A Fast Approximation of the Bilateral Filter using a Signal Processing Approach, ECCV, 2006 http://people.csail.mit.edu/sparis/bf/
Image Filtering Image smoothing via L0 Gradient Minimization L. Xu, C. Lu, Y. Xu, J. Jia, Image smoothing via L0 Gradient Minimization, SIGGRAPH Asia 2011 http://www.cse.cuhk.edu.hk/~leojia/projects/L0smoothing/L0smoothing.zip
Image Filtering Domain Transformation E. Gastal, M. Oliveira, Domain Transform for Edge-Aware Image and Video Processing, SIGGRAPH 2011 http://inf.ufrgs.br/~eslgastal/DomainTransform/DomainTransformFilters-Source-v1.0.zip
Image Processing andImage Filtering Piotr's Image & Video Matlab Toolbox Piotr Dollar, Piotr's Image & Video Matlab Toolbox, http://vision.ucsd.edu/~pdollar/toolbox/doc/index.html http://vision.ucsd.edu/~pdollar/toolbox/doc/index.html
Image Filtering Local Laplacian Filters S. Paris, S. Hasinoff, J. Kautz, Local Laplacian Filters: Edge-Aware Image Processing with a Laplacian Pyramid, SIGGRAPH 2011 http://people.csail.mit.edu/sparis/publi/2011/siggraph/matlab_source_code.zip
Image Filtering SVM for Edge-Preserving Filtering Q. Yang, S. Wang, and N. Ahuja, SVM for Edge-Preserving Filtering, CVPR 2010 http://vision.ai.uiuc.edu/~qyang6/publications/code/cvpr-10-svmbf/program_video_conferencing.zip
Image Filtering Anisotropic Diffusion P. Perona and J. Malik, Scale-space and edge detection using anisotropic diffusion, PAMI 1990 http://www.mathworks.com/matlabcentral/fileexchange/14995-anisotropic-diffusion-perona-malik
Image Quality Assessment SPIQA   http://vision.ai.uiuc.edu/~bghanem2/shared_code/SPIQA_code.zip
Image Quality Assessment Degradation Model   http://users.ece.utexas.edu/~bevans/papers/2000/imageQuality/index.html
Image Quality Assessment Feature SIMilarity Index   http://www4.comp.polyu.edu.hk/~cslzhang/IQA/FSIM/FSIM.htm
Image Quality Assessment Structural SIMilarity   https://ece.uwaterloo.ca/~z70wang/research/ssim/
Image Segmentation Segmentation by Minimum Code Length A. Y. Yang, J. Wright, S. Shankar Sastry, Y. Ma , Unsupervised Segmentation of Natural Images via Lossy Data Compression, CVIU, 2007 http://perception.csl.uiuc.edu/coding/image_segmentation/
Image Segmentation Normalized Cut J. Shi and J Malik, Normalized Cuts and Image Segmentation, PAMI, 2000 http://www.cis.upenn.edu/~jshi/software/
Image Segmentation Entropy Rate Superpixel Segmentation M.-Y. Liu, O. Tuzel, S. Ramalingam, and R. Chellappa, Entropy Rate Superpixel Segmentation, CVPR 2011 http://www.umiacs.umd.edu/~mingyliu/src/ers_matlab_wrapper_v0.1.zip
Image Segmentation Mean-Shift Image Segmentation - EDISON D. Comaniciu, P Meer. Mean Shift: A Robust Approach Toward Feature Space Analysis. PAMI 2002 http://coewww.rutgers.edu/riul/research/code/EDISON/index.html
Image Segmentation Efficient Graph-based Image Segmentation - Matlab Wrapper P. Felzenszwalb and D. Huttenlocher. Efficient Graph-Based Image Segmentation, IJCV 2004 http://www.mathworks.com/matlabcentral/fileexchange/25866-efficient-graph-based-image-segmentation
Image Segmentation Biased Normalized Cut S. Maji, N. Vishnoi and J. Malik, Biased Normalized Cut, CVPR 2011 http://www.cs.berkeley.edu/~smaji/projects/biasedNcuts/
Image Segmentation Multiscale Segmentation Tree E. Akbas and N. Ahuja, “From ramp discontinuities to segmentation tree,” ACCV 2009 and N. Ahuja, “A Transform for Multiscale Image Segmentation by Integrated Edge and Region Detection,” PAMI 1996 http://vision.ai.uiuc.edu/segmentation
Image Segmentation Efficient Graph-based Image Segmentation - C++ code P. Felzenszwalb and D. Huttenlocher. Efficient Graph-Based Image Segmentation, IJCV 2004 http://people.cs.uchicago.edu/~pff/segment/
Image Segmentation Superpixel by Gerg Mori X. Ren and J. Malik. Learning a classification model for segmentation. ICCV, 2003 http://www.cs.sfu.ca/~mori/research/superpixels/
Image Segmentation Segmenting Scenes by Matching Image Composites B. Russell, A. A. Efros, J. Sivic, W. T. Freeman, A. Zisserman, NIPS 2009 http://www.cs.washington.edu/homes/bcr/projects/SceneComposites/index.html
Image Segmentation Recovering Occlusion Boundaries from a Single Image D. Hoiem, A. Stein, A. A. Efros, M. Hebert, Recovering Occlusion Boundaries from a Single Image, ICCV 2007. http://www.cs.cmu.edu/~dhoiem/software/
Image Segmentation Quick-Shift A. Vedaldi and S. Soatto, Quick Shift and Kernel Methodsfor Mode Seeking, ECCV, 2008 http://www.vlfeat.org/overview/quickshift.html
Image Segmentation SLIC Superpixels R. Achanta, A. Shaji, K. Smith, A. Lucchi, P. Fua, and S. Susstrunk, SLIC Superpixels, EPFL Technical Report, 2010 http://ivrg.epfl.ch/supplementary_material/RK_SLICSuperpixels/index.html
Image Segmentation Mean-Shift Image Segmentation - Matlab Wrapper D. Comaniciu, P Meer. Mean Shift: A Robust Approach Toward Feature Space Analysis. PAMI 2002 http://www.wisdom.weizmann.ac.il/~bagon/matlab_code/edison_matlab_interface.tar.gz
Image Segmentation OWT-UCM Hierarchical Segmentation P. Arbelaez, M. Maire, C. Fowlkes and J. Malik. Contour Detection and Hierarchical Image Segmentation. PAMI, 2011 http://www.eecs.berkeley.edu/Research/Projects/CS/vision/grouping/resources.html
Image Segmentation Turbepixels A. Levinshtein, A. Stere, K. N. Kutulakos, D. J. Fleet, S. J. Dickinson, and K. Siddiqi, TurboPixels: Fast Superpixels Using Geometric Flows, PAMI 2009 http://www.cs.toronto.edu/~babalex/research.html
Image Super-resolution MRF for image super-resolution W. T Freeman and C. Liu. Markov Random Fields for Super-resolution and Texture Synthesis. In A. Blake, P. Kohli, and C. Rother, eds., Advances in Markov Random Fields for Vision and Image Processing, Chapter 10. MIT Press, 2011 http://people.csail.mit.edu/billf/project%20pages/sresCode/Markov%20Random%20Fields%20for%20Super-Resolution.html
Image Super-resolution Single-Image Super-Resolution Matlab Package R. Zeyde, M. Elad, and M. Protter, On Single Image Scale-Up using Sparse-Representations, LNCS 2010 http://www.cs.technion.ac.il/~elad/Various/Single_Image_SR.zip
Image Super-resolution Self-Similarities for Single Frame Super-Resolution C.-Y. Yang, J.-B. Huang, and M.-H. Yang, Exploiting Self-Similarities for Single Frame Super-Resolution, ACCV 2010 https://eng.ucmerced.edu/people/cyang35/ACCV10.zip
Image Super-resolution MDSP Resolution Enhancement Software S. Farsiu, D. Robinson, M. Elad, and P. Milanfar, Fast and Robust Multi-frame Super-resolution, TIP 2004 http://users.soe.ucsc.edu/~milanfar/software/superresolution.html
Image Super-resolution Sprarse coding super-resolution J. Yang, J. Wright, T. S. Huang, and Y. Ma. Image super-resolution via sparse representation, TIP 2010 http://www.ifp.illinois.edu/~jyang29/ScSR.htm
Image Super-resolution Multi-frame image super-resolution Pickup, L. C. Machine Learning in Multi-frame Image Super-resolution, PhD thesis http://www.robots.ox.ac.uk/~vgg/software/SR/index.html
Image Understanding SuperParsing J. Tighe and S. Lazebnik, SuperParsing: Scalable Nonparametric Image Parsing with Superpixels, ECCV 2010 http://www.cs.unc.edu/~jtighe/Papers/ECCV10/eccv10-jtighe-code.zip
Image Understanding Discriminative Models for Multi-Class Object Layout C. Desai, D. Ramanan, C. Fowlkes. "Discriminative Models for Multi-Class Object Layout, IJCV 2011 http://www.ics.uci.edu/~desaic/multiobject_context.zip
Image Understanding Nonparametric Scene Parsing via Label Transfer C. Liu, J. Yuen, and Antonio Torralba, Nonparametric Scene Parsing via Label Transfer, PAMI 2011 http://people.csail.mit.edu/celiu/LabelTransfer/index.html
Image Understanding Blocks World Revisited: Image Understanding using Qualitative Geometry and Mechanics A. Gupta, A. A. Efros, M. Hebert, Blocks World Revisited: Image Understanding using Qualitative Geometry and Mechanics, ECCV 2010 http://www.cs.cmu.edu/~abhinavg/blocksworld/#downloads
Image Understanding Towards Total Scene Understanding L.-J. Li, R. Socher and Li F.-F.. Towards Total Scene Understanding:Classification, Annotation and Segmentation in an Automatic Framework, CVPR 2009 http://vision.stanford.edu/projects/totalscene/index.html
Image Understanding Object Bank Li-Jia Li, Hao Su, Eric P. Xing and Li Fei-Fei. Object Bank: A High-Level Image Representation for Scene Classification and Semantic Feature Sparsification, NIPS 2010 http://vision.stanford.edu/projects/objectbank/index.html
Kernels and Distances Fast Directional Chamfer Matching   http://www.umiacs.umd.edu/~mingyliu/src/fdcm_matlab_wrapper_v0.2.zip
Kernels and Distances Efficient Earth Mover's Distance with L1 Ground Distance (EMD_L1) H. Ling and K. Okada, An Efficient Earth Mover's Distance Algorithm for Robust Histogram Comparison, PAMI 2007 http://www.dabi.temple.edu/~hbling/code/EmdL1_v3.zip
Kernels and Distances Diffusion-based distance H. Ling and K. Okada, Diffusion Distance for Histogram Comparison, CVPR 2006 http://www.dabi.temple.edu/~hbling/code/DD_v1.zip
Low-Rank Modeling TILT: Transform Invariant Low-rank Textures Z. Zhang, A. Ganesh, X. Liang, and Y. Ma, TILT: Transform Invariant Low-rank Textures, IJCV 2011 http://perception.csl.uiuc.edu/matrix-rank/tilt.html
Low-Rank Modeling Low-Rank Matrix Recovery and Completion   http://perception.csl.uiuc.edu/matrix-rank/sample_code.html
Low-Rank Modeling RASL: Robust Batch Alignment of Images by Sparse and Low-Rank Decomposition Y. Peng, A. Ganesh, J. Wright, W. Xu, and Y. Ma, RASL: Robust Batch Alignment of Images by Sparse and Low-Rank Decomposition, CVPR 2010 http://perception.csl.uiuc.edu/matrix-rank/rasl.html
MRF Optimization MRF Minimization Evaluation R. Szeliski et al., A Comparative Study of Energy Minimization Methods for Markov Random Fields with Smoothness-Based Priors, PAMI, 2008 http://vision.middlebury.edu/MRF/
MRF Optimization Max-flow/min-cut for shape fitting V. Lempitsky and Y. Boykov, Global Optimization for Shape Fitting, CVPR 2007 http://www.csd.uwo.ca/faculty/yuri/Implementations/TouchExpand.zip
MRF Optimization Max-flow/min-cut Y. Boykov and V. Kolmogorov, An Experimental Comparison of Min-Cut/Max-Flow Algorithms for Energy Minimization in Vision, PAMI 2004 http://vision.csd.uwo.ca/code/maxflow-v3.01.zip
MRF Optimization Planar Graph Cut F. R. Schmidt, E. Toppe and D. Cremers, Efficient Planar Graph Cuts with Applications in Computer Vision, CVPR 2009 http://vision.csd.uwo.ca/code/PlanarCut-v1.0.zip
MRF Optimization Max-flow/min-cut for massive grids A. Delong and Y. Boykov, A Scalable Graph-Cut Algorithm for N-D Grids, CVPR 2008 http://vision.csd.uwo.ca/code/regionpushrelabel-v1.03.zip
MRF Optimization Multi-label optimization Y. Boykov, O. Verksler, and R. Zabih, Fast Approximate Energy Minimization via Graph Cuts, PAMI 2001 http://vision.csd.uwo.ca/code/gco-v3.0.zip
Machine Learning Statistical Pattern Recognition Toolbox M.I. Schlesinger, V. Hlavac: Ten lectures on the statistical and structural pattern recognition, Kluwer Academic Publishers, 2002 http://cmp.felk.cvut.cz/cmp/software/stprtool/
Machine Learning Netlab Neural Network Software C. M. Bishop, Neural Networks for Pattern RecognitionㄝOxford University Press, 1995 http://www1.aston.ac.uk/eas/research/groups/ncrg/resources/netlab/
Machine Learning Boosting Resources by Liangliang Cao http://www.ifp.illinois.edu/~cao4/reading/boostingbib.htm http://www.ifp.illinois.edu/~cao4/reading/boostingbib.htm
Machine Learning FastICA package for MATLAB http://research.ics.tkk.fi/ica/book/ http://research.ics.tkk.fi/ica/fastica/
Multi-View Stereo Patch-based Multi-view Stereo Software Y. Furukawa and J. Ponce, Accurate, Dense, and Robust Multi-View Stereopsis, PAMI 2009 http://grail.cs.washington.edu/software/pmvs/
Multi-View Stereo Clustering Views for Multi-view Stereo Y. Furukawa, B. Curless, S. M. Seitz, and R. Szeliski, Towards Internet-scale Multi-view Stereo, CVPR 2010 http://grail.cs.washington.edu/software/cmvs/
Multi-View Stereo Multi-View Stereo Evaluation S. Seitz et al. A Comparison and Evaluation of Multi-View Stereo Reconstruction Algorithms, CVPR 2006 http://vision.middlebury.edu/mview/
Multiple Instance Learning DD-SVM Yixin Chen and James Z. Wang, Image Categorization by Learning and Reasoning with Regions, JMLR 2004  
Multiple Instance Learning MIForests C. Leistner, A. Saffari, and H. Bischof, MIForests: Multiple-Instance Learning with Randomized Trees, ECCV 2010 http://www.ymer.org/amir/software/milforests/
Multiple Instance Learning MILIS Z. Fu, A. Robles-Kelly, and J. Zhou, MILIS: Multiple instance learning with instance selection, PAMI 2010  
Multiple Instance Learning MILES Y. Chen, J. Bi and J. Z. Wang, MILES: Multiple-Instance Learning via Embedded Instance Selection. PAMI 2006 http://infolab.stanford.edu/~wangz/project/imsearch/SVM/PAMI06/
Multiple Kernel Learning SHOGUN S. Sonnenburg, G. Rätsch, C. Schäfer, B. Schölkopf . Large scale multiple kernel learning. JMLR, 2006 http://www.shogun-toolbox.org/
Multiple Kernel Learning OpenKernel.org F. Orabona and L. Jie. Ultra-fast optimization algorithm for sparse multi kernel learning. ICML, 2011 http://www.openkernel.org/
Multiple Kernel Learning SimpleMKL A. Rakotomamonjy, F. Bach, S. Canu, and Y. Grandvalet. Simplemkl. JMRL, 2008 http://asi.insa-rouen.fr/enseignants/~arakotom/code/mklindex.html
Multiple Kernel Learning DOGMA F. Orabona, L. Jie, and B. Caputo. Online-batch strongly convex multi kernel learning. CVPR, 2010 http://dogma.sourceforge.net/
Multiple View Geometry MATLAB and Octave Functions for Computer Vision and Image Processing P. D. Kovesi. MATLAB and Octave Functions for Computer Vision and Image Processing, http://www.csse.uwa.edu.au/~pk/research/matlabfns http://www.csse.uwa.edu.au/~pk/Research/MatlabFns/index.html
Multiple View Geometry Matlab Functions for Multiple View Geometry   http://www.robots.ox.ac.uk/~vgg/hzbook/code/
Nearest Neighbors Matching ANN: Approximate Nearest Neighbor Searching   http://www.cs.umd.edu/~mount/ANN/
Nearest Neighbors Matching Spectral Hashing Y. Weiss, A. Torralba, R. Fergus, Spectral Hashing, NIPS 2008 http://www.cs.huji.ac.il/~yweiss/SpectralHashing/
Nearest Neighbors Matching Coherency Sensitive Hashing S. Korman, S. Avidan, Coherency Sensitive Hashing, ICCV 2011 http://www.eng.tau.ac.il/~simonk/CSH/index.html
Nearest Neighbors Matching FLANN: Fast Library for Approximate Nearest Neighbors   http://www.cs.ubc.ca/~mariusm/index.php/FLANN/FLANN
Nearest Neighbors Matching LDAHash: Binary Descriptors for Matching in Large Image Databases C. Strecha, A. M. Bronstein, M. M. Bronstein and P. Fua. LDAHash: Improved matching with smaller descriptors, PAMI, 2011. http://cvlab.epfl.ch/research/detect/ldahash/index.php
Object Detection Poselet L. Bourdev, J. Malik, Poselets: Body Part Detectors Trained Using 3D Human Pose Annotations, ICCV 2009 http://www.eecs.berkeley.edu/~lbourdev/poselets/
Object Detection Cascade Object Detection with Deformable Part Models P. Felzenszwalb, R. Girshick, D. McAllester. Cascade Object Detection with Deformable Part Models. CVPR, 2010 http://people.cs.uchicago.edu/~rbg/star-cascade/
Object Detection Multiple Kernels A. Vedaldi, V. Gulshan, M. Varma, and A. Zisserman, Multiple Kernels for Object Detection. ICCV, 2009 http://www.robots.ox.ac.uk/~vgg/software/MKL/
Object Detection Hough Forests for Object Detection J. Gall and V. Lempitsky, Class-Specific Hough Forests for Object Detection, CVPR, 2009 http://www.vision.ee.ethz.ch/~gallju/projects/houghforest/index.html
Object Detection Discriminatively Trained Deformable Part Models P. Felzenszwalb, R. Girshick, D. McAllester, D. Ramanan. Object Detection with Discriminatively Trained Part Based Models, PAMI, 2010 http://people.cs.uchicago.edu/~pff/latent/
Feature Extraction andObject Detection Histogram of Oriented Graidents - OLT for windows N. Dalal and B. Triggs. Histograms of Oriented Gradients for Human Detection. CVPR 2005 http://www.computing.edu.au/~12482661/hog.html
Feature Extraction andObject Detection Histogram of Oriented Graidents - INRIA Object Localization Toolkit N. Dalal and B. Triggs. Histograms of Oriented Gradients for Human Detection. CVPR 2005 http://www.navneetdalal.com/software
Object Detection Recognition using regions C. Gu, J. J. Lim, P. Arbelaez, and J. Malik, CVPR 2009 http://www.cs.berkeley.edu/~chunhui/publications/cvpr09_v2.zip
Object Detection A simple parts and structure object detector ICCV 2005 short courses on Recognizing and Learning Object Categories http://people.csail.mit.edu/fergus/iccv2005/partsstructure.html
Object Detection Feature Combination P. Gehler and S. Nowozin, On Feature Combination for Multiclass Object Detection, ICCV, 2009 http://www.vision.ee.ethz.ch/~pgehler/projects/iccv09/index.html
Object Detection Ensemble of Exemplar-SVMs T. Malisiewicz, A. Gupta, A. Efros. Ensemble of Exemplar-SVMs for Object Detection and Beyond . ICCV, 2011 http://www.cs.cmu.edu/~tmalisie/projects/iccv11/
Object Detection A simple object detector with boosting ICCV 2005 short courses on Recognizing and Learning Object Categories http://people.csail.mit.edu/torralba/shortCourseRLOC/boosting/boosting.html
Object Detection Max-Margin Hough Transform S. Maji and J. Malik, Object Detection Using a Max-Margin Hough Transform. CVPR 2009 http://www.cs.berkeley.edu/~smaji/projects/max-margin-hough/
Object Detection Implicit Shape Model B. Leibe, A. Leonardis, B. Schiele. Robust Object Detection with Interleaved Categorization and Segmentation, IJCV, 2008 http://www.vision.ee.ethz.ch/~bleibe/code/ism.html
Object Detection Ensemble of Exemplar-SVMs for Object Detection and Beyond T. Malisiewicz, A. Gupta, A. A. Efros, Ensemble of Exemplar-SVMs for Object Detection and Beyond , ICCV 2011 http://www.cs.cmu.edu/~tmalisie/projects/iccv11/
Object Detection Viola-Jones Object Detection P. Viola and M. Jones, Rapid Object Detection Using a Boosted Cascade of Simple Features, CVPR, 2001 http://pr.willowgarage.com/wiki/FaceDetection
Object Discovery Using Multiple Segmentations to Discover Objects and their Extent in Image Collections B. Russell, A. A. Efros, J. Sivic, W. T. Freeman, A. Zisserman, Using Multiple Segmentations to Discover Objects and their Extent in Image Collections, CVPR 2006 http://people.csail.mit.edu/brussell/research/proj/mult_seg_discovery/index.html
Object Proposal Objectness measure B. Alexe, T. Deselaers, V. Ferrari, What is an Object?, CVPR 2010 http://www.vision.ee.ethz.ch/~calvin/objectness/objectness-release-v1.01.tar.gz
Object Proposal Parametric min-cut J. Carreira and C. Sminchisescu. Constrained Parametric Min-Cuts for Automatic Object Segmentation, CVPR 2010 http://sminchisescu.ins.uni-bonn.de/code/cpmc/
Object Proposal Region-based Object Proposal I. Endres and D. Hoiem. Category Independent Object Proposals, ECCV 2010 http://vision.cs.uiuc.edu/proposals/
Object Recognition Recognition by Association via Learning Per-exemplar Distances T. Malisiewicz, A. A. Efros, Recognition by Association via Learning Per-exemplar Distances, CVPR 2008 http://www.cs.cmu.edu/~tmalisie/projects/cvpr08/dfuns.tar.gz
Object Recognition Biologically motivated object recognition T. Serre, L. Wolf and T. Poggio. Object recognition with features inspired by visual cortex, CVPR 2005 http://cbcl.mit.edu/software-datasets/standardmodel/index.html
Object Segmentation Geodesic Star Convexity for Interactive Image Segmentation V. Gulshan, C. Rother, A. Criminisi, A. Blake and A. Zisserman. Geodesic star convexity for interactive image segmentation http://www.robots.ox.ac.uk/~vgg/software/iseg/index.shtml
Object Segmentation ClassCut for Unsupervised Class Segmentation B. Alexe, T. Deselaers and V. Ferrari, ClassCut for Unsupervised Class Segmentation, ECCV 2010 http://www.vision.ee.ethz.ch/~calvin/classcut/ClassCut-release.zip
Object Segmentation Sparse to Dense Labeling P. Ochs, T. Brox, Object Segmentation in Video: A Hierarchical Variational Approach for Turning Point Trajectories into Dense Regions, ICCV 2011 http://lmb.informatik.uni-freiburg.de/resources/binaries/SparseToDenseLabeling.tar.gz
Optical Flow Optical Flow by Deqing Sun D. Sun, S. Roth, M. J. Black, Secrets of Optical Flow Estimation and Their Principles, CVPR, 2010 http://www.cs.brown.edu/~dqsun/code/flow_code.zip
Optical Flow Classical Variational Optical Flow T. Brox, A. Bruhn, N. Papenberg, J. Weickert, High accuracy optical flow estimation based on a theory for warping, ECCV 2004 http://lmb.informatik.uni-freiburg.de/resources/binaries/
Optical Flow Large Displacement Optical Flow T. Brox, J. Malik, Large displacement optical flow: descriptor matching in variational motion estimation, PAMI 2011 http://lmb.informatik.uni-freiburg.de/resources/binaries/
Optical Flow Dense Point Tracking N. Sundaram, T. Brox, K. Keutzer Dense point trajectories by GPU-accelerated large displacement optical flow, ECCV 2010 http://lmb.informatik.uni-freiburg.de/resources/binaries/
Optical Flow Optical Flow Evaluation S. Baker et al. A Database and Evaluation Methodology for Optical Flow, IJCV, 2011 http://vision.middlebury.edu/flow/
Optical Flow Horn and Schunck's Optical Flow   http://www.cs.brown.edu/~dqsun/code/hs.zip
Optical Flow Black and Anandan's Optical Flow   http://www.cs.brown.edu/~dqsun/code/ba.zip
Pose Estimation Training Deformable Models for Localization Ramanan, D. "Learning to Parse Images of Articulated Bodies." NIPS 2006 http://www.ics.uci.edu/~dramanan/papers/parse/index.html
Pose Estimation Calvin Upper-Body Detector E. Marcin, F. Vittorio, Better Appearance Models for Pictorial Structures, BMVC 2009 http://www.vision.ee.ethz.ch/~calvin/calvin_upperbody_detector/
Pose Estimation Articulated Pose Estimation using Flexible Mixtures of Parts Y. Yang, D. Ramanan, Articulated Pose Estimation using Flexible Mixtures of Parts, CVPR 2011 http://phoenix.ics.uci.edu/software/pose/
Pose Estimation Estimating Human Pose from Occluded Images J.-B. Huang and M.-H. Yang, Estimating Human Pose from Occluded Images, ACCV 2009 http://faculty.ucmerced.edu/mhyang/code/accv09_pose.zip
Saliency Detection Saliency detection: A spectral residual approach X. Hou and L. Zhang. Saliency detection: A spectral residual approach. CVPR, 2007 http://www.klab.caltech.edu/~xhou/projects/spectralResidual/spectralresidual.html
Saliency Detection Saliency Using Natural statistics L. Zhang, M. Tong, T. Marks, H. Shan, and G. Cottrell. Sun: A bayesian framework for saliency using natural statistics. Journal of Vision, 2008 http://cseweb.ucsd.edu/~l6zhang/
Saliency Detection Attention via Information Maximization N. Bruce and J. Tsotsos. Saliency based on information maximization. In NIPS, 2005 http://www.cse.yorku.ca/~neil/AIM.zip
Saliency Detection Itti, Koch, and Niebur' saliency detection L. Itti, C. Koch, and E. Niebur. A model of saliency-based visual attention for rapid scene analysis. PAMI, 1998 http://www.saliencytoolbox.net/
Saliency Detection Frequency-tuned salient region detection R. Achanta, S. Hemami, F. Estrada, and S. Susstrunk. Frequency-tuned salient region detection. In CVPR, 2009 http://ivrgwww.epfl.ch/supplementary_material/RK_CVPR09/index.html
Saliency Detection Saliency-based video segmentation K. Fukuchi, K. Miyazato, A. Kimura, S. Takagi and J. Yamato, Saliency-based video segmentation with graph cuts and sequentially updated priors, ICME 2009 http://www.brl.ntt.co.jp/people/akisato/saliency3.html
Saliency Detection Segmenting salient objects from images and videos E. Rahtu, J. Kannala, M. Salo, and J. Heikkila. Segmenting salient objects from images and videos. CVPR, 2010 http://www.cse.oulu.fi/MVG/Downloads/saliency
Saliency Detection Graph-based visual saliency J. Harel, C. Koch, and P. Perona. Graph-based visual saliency. NIPS, 2007 http://www.klab.caltech.edu/~harel/share/gbvs.php
Saliency Detection Learning to Predict Where Humans Look T. Judd and K. Ehinger and F. Durand and A. Torralba, Learning to Predict Where Humans Look, ICCV, 2009 http://people.csail.mit.edu/tjudd/WherePeopleLook/index.html
Saliency Detection Spectrum Scale Space based Visual Saliency J Li, M D. Levine, X An and H. He, Saliency Detection Based on Frequency and Spatial Domain Analyses, BMVC 2011 http://www.cim.mcgill.ca/~lijian/saliency.htm
Saliency Detection Discriminant Saliency for Visual Recognition from Cluttered Scenes D. Gao and N. Vasconcelos, Discriminant Saliency for Visual Recognition from Cluttered Scenes, NIPS, 2004 http://www.svcl.ucsd.edu/projects/saliency/
Saliency Detection Context-aware saliency detection S. Goferman, L. Zelnik-Manor, and A. Tal. Context-aware saliency detection. In CVPR, 2010. http://webee.technion.ac.il/labs/cgm/Computer-Graphics-Multimedia/Software/Saliency/Saliency.html
Saliency Detection Saliency detection using maximum symmetric surround R. Achanta and S. Susstrunk. Saliency detection using maximum symmetric surround. In ICIP, 2010 http://ivrg.epfl.ch/supplementary_material/RK_ICIP2010/index.html
Saliency Detection Global Contrast based Salient Region Detection M.-M. Cheng, G.-X. Zhang, N. J. Mitra, X. Huang, S.-M. Hu. Global Contrast based Salient Region Detection. CVPR, 2011 http://cg.cs.tsinghua.edu.cn/people/~cmm/saliency/
Saliency Detection Learning Hierarchical Image Representation with Sparsity, Saliency and Locality J. Yang and M.-H. Yang, Learning Hierarchical Image Representation with Sparsity, Saliency and Locality, BMVC 2011  
Sparse Representation Centralized Sparse Representation for Image Restoration W. Dong, L. Zhang and G. Shi, “Centralized Sparse Representation for Image Restoration,” ICCV 2011 http://www4.comp.polyu.edu.hk/~cslzhang/code/CSR_IR.zip
Sparse Representation Efficient sparse coding algorithms H. Lee, A. Battle, R. Rajat and A. Y. Ng, Efficient sparse coding algorithms, NIPS 2007 http://ai.stanford.edu/~hllee/softwares/nips06-sparsecoding.htm
Sparse Representation Fisher Discrimination Dictionary Learning for Sparse Representation M. Yang, L. Zhang, X. Feng and D. Zhang, Fisher Discrimination Dictionary Learning for Sparse Representation, ICCV 2011 http://www4.comp.polyu.edu.hk/~cslzhang/code/FDDL.zip
Sparse Representation Robust Sparse Coding for Face Recognition M. Yang, L. Zhang, J. Yang and D. Zhang, “Robust Sparse Coding for Face Recognition,” CVPR 2011 http://www4.comp.polyu.edu.hk/~cslzhang/code/RSC.zip
Sparse Representation Sparse and Redundant Representations: From Theory to Applications in Signal and Image Processing M. Elad, Sparse and Redundant Representations: From Theory to Applications in Signal and Image Processing http://www.cs.technion.ac.il/~elad/Various/Matlab-Package-Book.rar
Sparse Representation SPArse Modeling Software J. Mairal, F. Bach, J. Ponce and G. Sapiro. Online Learning for Matrix Factorization and Sparse Coding, JMLR 2010 http://www.di.ens.fr/willow/SPAMS/
Sparse Representation Sparse coding simulation software Olshausen BA, Field DJ, "Emergence of Simple-Cell Receptive Field Properties by Learning a Sparse Code for Natural Images", Nature 1996 http://redwood.berkeley.edu/bruno/sparsenet/
Sparse Representation A Linear Subspace Learning Approach via Sparse Coding L. Zhang, P. Zhu, Q. Hu and D. Zhang, “A Linear Subspace Learning Approach via Sparse Coding,” ICCV 2011 http://www4.comp.polyu.edu.hk/~cslzhang/code/LSL_SC.zip
Stereo Constant-Space Belief Propagation Q. Yang, L. Wang, and N. Ahuja, A Constant-Space Belief Propagation Algorithm for Stereo Matching, CVPR 2010 http://www.cs.cityu.edu.hk/~qiyang/publications/code/cvpr-10-csbp/csbp.htm
Stereo Stereo Evaluation D. Scharstein and R. Szeliski. A taxonomy and evaluation of dense two-frame stereo correspondence algorithms, IJCV 2001 http://vision.middlebury.edu/stereo/
Image Denoising andStereo Matching Efficient Belief Propagation for Early Vision P. F. Felzenszwalb and D. P. Huttenlocher, Efficient Belief Propagation for Early Vision, IJCV, 2006 http://www.cs.brown.edu/~pff/bp/
Structure from motion Nonrigid Structure From Motion in Trajectory Space   http://cvlab.lums.edu.pk/nrsfm/index.html
Structure from motion libmv   http://code.google.com/p/libmv/
Structure from motion Bundler N. Snavely, S M. Seitz, R Szeliski. Photo Tourism: Exploring image collections in 3D. SIGGRAPH 2006 http://phototour.cs.washington.edu/bundler/
Structure from motion FIT3D   http://www.fit3d.info/
Structure from motion VisualSFM : A Visual Structure from Motion System   http://www.cs.washington.edu/homes/ccwu/vsfm/
Structure from motion OpenSourcePhotogrammetry   http://opensourcephotogrammetry.blogspot.com/
Structure from motion Structure and Motion Toolkit in Matlab   http://cms.brookes.ac.uk/staff/PhilipTorr/Code/code_page_4.htm
Structure from motion Structure from Motion toolbox for Matlab by Vincent Rabaud   http://code.google.com/p/vincents-structure-from-motion-matlab-toolbox/
Subspace Learning Generalized Principal Component Analysis R. Vidal, Y. Ma and S. Sastry. Generalized Principal Component Analysis (GPCA), CVPR 2003 http://www.vision.jhu.edu/downloads/main.php?dlID=c1
Text Recognition Text recognition in the wild K. Wang, B. Babenko, and S. Belongie, End-to-end Scene Text Recognition, ICCV 2011 http://vision.ucsd.edu/~kai/grocr/
Text Recognition Neocognitron for handwritten digit recognition K. Fukushima: "Neocognitron for handwritten digit recognition", Neurocomputing, 2003 http://visiome.neuroinf.jp/modules/xoonips/detail.php?item_id=375
Texture Synthesis Image Quilting for Texture Synthesis and Transfer A. A. Efros and W. T. Freeman, Image Quilting for Texture Synthesis and Transfer, SIGGRAPH 2001 http://www.cs.cmu.edu/~efros/quilt_research_code.zip
Visual Tracking GPU Implementation of Kanade-Lucas-Tomasi Feature Tracker S. N Sinha, J.-M. Frahm, M. Pollefeys and Y. Genc, Feature Tracking and Matching in Video Using Programmable Graphics Hardware, MVA, 2007 http://cs.unc.edu/~ssinha/Research/GPU_KLT/
Visual Tracking Superpixel Tracking S. Wang, H. Lu, F. Yang, and M.-H. Yang, Superpixel Tracking, ICCV 2011 http://faculty.ucmerced.edu/mhyang/papers/iccv11a.html
Visual Tracking Tracking with Online Multiple Instance Learning B. Babenko, M.-H. Yang, S. Belongie, Visual Tracking with Online Multiple Instance Learning, PAMI 2011 http://vision.ucsd.edu/~bbabenko/project_miltrack.shtml
Visual Tracking Motion Tracking in Image Sequences C. Stauffer and W. E. L. Grimson. Learning patterns of activity using real-time tracking, PAMI, 2000 http://www.cs.berkeley.edu/~flw/tracker/
Visual Tracking L1 Tracking X. Mei and H. Ling, Robust Visual Tracking using L1 Minimization, ICCV, 2009 http://www.dabi.temple.edu/~hbling/code_data.htm
Visual Tracking Online Discriminative Object Tracking with Local Sparse Representation Q. Wang, F. Chen, W. Xu, and M.-H. Yang, Online Discriminative Object Tracking with Local Sparse Representation, WACV 2012 http://faculty.ucmerced.edu/mhyang/code/wacv12a_code.zip
Visual Tracking KLT: An Implementation of the Kanade-Lucas-Tomasi Feature Tracker B. D. Lucas and T. Kanade. An Iterative Image Registration Technique with an Application to Stereo Vision. IJCAI, 1981 http://www.ces.clemson.edu/~stb/klt/
Visual Tracking Online boosting trackers H. Grabner, and H. Bischof, On-line Boosting and Vision, CVPR, 2006 http://www.vision.ee.ethz.ch/boostingTrackers/
Visual Tracking Visual Tracking Decomposition J Kwon and K. M. Lee, Visual Tracking Decomposition, CVPR 2010 http://cv.snu.ac.kr/research/~vtd/
Visual Tracking Globally-Optimal Greedy Algorithms for Tracking a Variable Number of Objects H. Pirsiavash, D. Ramanan, C. Fowlkes. "Globally-Optimal Greedy Algorithms for Tracking a Variable Number of Objects, CVPR 2011 http://www.ics.uci.edu/~hpirsiav/papers/tracking_cvpr11_release_v1.0.tar.gz
Visual Tracking Lucas-Kanade affine template tracking S. Baker and I. Matthews, Lucas-Kanade 20 Years On: A Unifying Framework, IJCV 2002 http://www.mathworks.com/matlabcentral/fileexchange/24677-lucas-kanade-affine-template-tracking
Visual Tracking Object Tracking A. Yilmaz, O. Javed and M. Shah, Object Tracking: A Survey, ACM Journal of Computing Surveys, Vol. 38, No. 4, 2006 http://plaza.ufl.edu/lvtaoran/object%20tracking.htm
Visual Tracking Visual Tracking with Histograms and Articulating Blocks S. M. Shshed Nejhum, J. Ho, and M.-H.Yang, Visual Tracking with Histograms and Articulating Blocks, CVPR 2008 http://www.cise.ufl.edu/~smshahed/tracking.htm
Visual Tracking Tracking using Pixel-Wise Posteriors C. Bibby and I. Reid, Tracking using Pixel-Wise Posteriors, ECCV 2008 http://www.robots.ox.ac.uk/~cbibby/research_pwp.shtml
Visual Tracking Incremental Learning for Robust Visual Tracking D. Ross, J. Lim, R.-S. Lin, M.-H. Yang, Incremental Learning for Robust Visual Tracking, IJCV 2007 http://www.cs.toronto.edu/~dross/ivt/
Visual Tracking Particle Filter Object Tracking   http://blogs.oregonstate.edu/hess/code/particles/
 

Other useful links (dataset, lectures, and other softwares)

Conference Information

Papers

Datasets

Lectures

Source Codes

Patents

Source Codes

本文内容由网友自发贡献,版权归原作者所有,本站不承担相应法律责任。如您发现有涉嫌抄袭侵权的内容,请联系:hwhale#tublm.com(使用前将#替换为@)

UIUC同学Jia-Bin Huang收集的计算机视觉代码合集(ZZ) 的相关文章

  • 关于访问说明符

    我定义了一个类基 class Base private int i Base int i this i i 所以基类的对象可以访问私有变量 class BaseDemo public static void main String args
  • 如何在Android中将位图转换为PNG,然后转换为base64?

    正如标题所暗示的 我试图让我的 Android 应用程序的用户从他的设备中选择一个图像 完成 然后我想缩小图像 完成 将图像压缩 转换为 png 并发送它作为 Base64 字符串发送给 API 所以我目前调整图像大小 如下所示 optio
  • 在Java中,当对象实例化失败时会发生什么?

    我有 C 背景 我发现自己经常在 Java 中这样做 SomeClass sc new SomeClass if null sc sc doSomething 我想知道的是 如果构造函数由于某种原因失败 比如可能没有足够的内存 变量 sc
  • 使用 OpenCV 和 Python 叠加两个图像而不丢失颜色强度

    如何叠加两个图像而不损失两个图像的颜色强度 我有图像1和图像2 2 我尝试使用 0 5 alpha 和 beta 但它给我的合并图像的颜色强度只有一半 dst cv2 addWeighted img1 0 5 img2 0 5 0 但是当我
  • JavaScript:document.getElementById 性能缓慢?

    我反复使用document getElementById很多关于commonCSS 元素 如果我创建一个global array存储我所有的document getElementById元素而不是每次重新获取元素 示例 而不是 docume
  • 将 FORTRAN 对象传递给 C,反之亦然

    我有我的 Fortran 对象 即 this object a this object b this object c 我想将它传递给用 C 编写的代码 我主要是一名 FORTRAN 程序员 而且我很少接触 C 我正在使用iso c bin
  • matlab中的排列函数是如何工作的

    这是一个有点愚蠢的问题 但我似乎无法弄清楚排列在 matlab 中是如何工作的 以文档为例 A 1 2 3 4 permute A 2 1 ans 1 3 2 4 到底是怎么回事 这如何告诉 matlab 3 和 2 需要交换 哇 这是我迄
  • 如何从 url Codenameone 创建图像

    我需要从具有图像 url 的字符串创建一个新的 Image 实例 E g http maps gstatic com mapfiles place api icons restaurant 71 png http maps gstatic
  • CoreData:是否将图像存储到数据库?

    我正在制作一个应用程序 它从网站上为某些用户名拍摄照片 并将其显示在带有用户名的 UITable 中 然后当单击用户名时 它会显示该用户的照片 然后单击照片名称 它会显示全屏照片 我的问题是我正在使用 NSData 从互联网获取照片 我必须
  • Java - 调整图像大小而不损失质量

    我有 10 000 张照片需要调整大小 因此我有一个 Java 程序来执行此操作 不幸的是 图像的质量损失很大 而且我无法访问未压缩的图像 import java awt Graphics import java awt AlphaComp
  • C for 循环索引:新 CPU 中的前向索引更快吗?

    在我订阅的邮件列表上 两位知识渊博的 IMO 程序员正在讨论一些优化的代码 并说了以下内容 在 5 8 年前发布的 CPU 上 向后迭代 for 循环稍微快一些 e g for int i x 1 i gt 0 i 因为比较i归零比将其与其
  • MATLAB - 冲浪图数据结构

    我用两种不同的方法进行了计算 对于这些计算 我改变了 2 个参数 x 和 y 最后 我计算了每种变体的两种方法之间的 误差 现在我想根据结果创建 3D 曲面图 x gt on x axis y gt on y axis Error gt o
  • Java:ImageIcon 与 Image 的区别

    谁能以菜鸟的方式向我解释一下两者之间有什么区别图像图标 and ImageJava 中的类 对象 谢谢 它们的性质和应用是不同的 Image http docs oracle com javase 6 docs api java awt I
  • 将 Javascript 对象的属性从 string 更改为 int

    我有一个对象数组 每个对象具有三个属性 年份 总计 人均 例子 0 Object per capita 125 8 total 1007 2 year 2009 这些属性是字符串 我想创建一个循环来遍历数组并将它们转换为 int 我尝试了以
  • 如何使使用 css 调整大小的图像在 IE 中看起来不错?

    当使用 css 宽度 高度或属性宽度 高度缩放图像时 IE6 和 IE7 无法很好地缩放网页中的图像 我不确定它默认使用哪种算法 但这不好 在这些浏览器中缩放时 缩放图像会显示锯齿伪影 幸运的是 有一种方法可以通过简单的 css 规则强制
  • 在 Android 中调整可绘制对象的大小

    我正在为进度对话框设置一个可绘制对象 pbarDialog 但我的问题是我想每次调整可绘制的大小 但不知道如何调整 这是一些代码 Handler progressHandler new Handler public void handleM
  • 图像随机损坏(但刷新后加载)并显示“资源解释为图像但使用 MIME 类型 text/html 传输”

    我目前正在开发一个简单的 php 网站 问题是 我的整个网站中的图像 发生在所有 php 文件中 随机损坏并显示错误资源解释为图像 但以 MIME 类型 text html 传输但是 如果我尝试多次刷新页面 可以再次加载图像并且错误消失 我
  • 从开始/结束索引列表创建向量化数组

    我有一个两列矩阵M包含一堆间隔的开始 结束索引 startInd EndInd 1 3 6 10 12 12 15 16 如何生成所有区间索引的向量 v 1 2 3 6 7 8 9 10 12 15 16 我正在使用循环执行上述操作 但我想
  • Matlab 的 imresize 函数中用于插值的算法是什么?

    我正在使用 Matlab Octaveimresize 对给定的二维数组重新采样的函数 我想了解如何使用特定的插值算法imresize works 我在Windows上使用八度 e g A 1 2 3 4 是一个二维数组 然后我使用命令 b
  • 通过 htaccess 将 PNG 解析为 PHP 仅适用于本地服务器,但不适用于网络服务器

    我用 PHP 创建了一个动态 PNG 图片 为了使用 PNG 扩展名 我创建了一个包含以下内容的 htaccess 文件 AddType application x httpd php png 在我的本地 XAMPP 服务器上 一切工作正常

随机推荐

  • 查看jar包工具——JByteMod学习及分享

    Aspose于2002年3月在澳大利亚悉尼创建 公司网站于2002年10月对外发布 Aspose 一直致力于成为全球最大的 Net 组件提供商 为全球 NET 程序员提供最丰富的选择 数十个国家的数千机构选择了Aspose的产品 这包括微软
  • 前端开发者需要去了解的一些Node.js知识以及应用场景

    注意 后续技术分享 第一时间更新 以及更多更及时的技术资讯和学习技术资料 将在公众号CTO Plus发布 请关注公众号 CTO Plus Node js系列文章推荐阅读 JavaScript匿名函数的定义 特性 作用和使用场景详解 Node
  • Ubuntu下安装mysql笔记

    1 首先更新本地存储库索引 执行sudo apt update 2 执行安装命令 sudo apt install mysql server y 遇到下面的报错 E Could not get lock var lib dpkg lock
  • flutter 自己发消息,列表跳到最底部,收到消息,如果不在底部就显示“有未读消息”,点击跳到最底部

    先判断该消息是否时自己发的 如果是自己发的 列表就跳到底部 如果不是自己发的消息 就判断是否在底部 如果不在底部就显示 有未读消息 如果在底部就不用显示 有未读消息 点击 有未读消息 跳转到列表底部 因为列表反转了 所以底部是0 顶部是列表
  • 常见的#pragma预处理命令

    pragma comment 将一个注释记录放置到对象文件或可执行文件中 pragma pack 用来改变编译器的字节对齐方式 pragma code seg 它能够设置程序中的函数在obj文件中所在的代码段 如果未指定参数 函数将放置在默
  • VLP-16 velodyne + kinect dk 复现 LeGO-LOAM

    参考 使用自己的激光雷达 数据集运行lego loam 修改代码教程 和道一文字 的博客 CSDN博客 LeGO LOAM 编译安装与运行 Yeah2333的博客 CSDN博客 lego loam运行 一 配置VLP16 sudo apt
  • Inkscape插入LaTeX公式

    Inkscape插入LaTeX公式 Inkscape软件自身没有插入公式的功能 在一些需要公式配合的图片 Inkscape无法正常制图 为了解决该问题 本文采用Inkscape中安装TexText扩展的方法 使得Inkscape在制图过程中
  • 在阿里云的生产环境下:nginx同一域名下配置多个静态页面

    背景说明 这两天公司前端开发工程师提出要求 在公司的主业务域名中加一个静态页面进去 在这里我就不透露公司的域名是什么 我们把域名估且为www ganbing com 这种需求很多公司是经常有的 写一个重定向啊 加个静态页面啊 实现跨域访问啊
  • java的值传递

    java中只有值传递 1 对于基本数据类型 改变形参的值不会影响实参的值 2 对于引用类型 改变形参的值会不会影响实参的值 这个我们得分情况 情况1 修改的是形参的指向的话就不改变原来实参的值 情况2 修改的是形参的值的话就会改变原来实参的
  • 使用three.js渲染第一个场景和物体

    一 效果图 二 渲染场景和物体的步骤 创建场景 Scene 在 three js 中创建场景通过调用 THREE Scene 方法 然后将其赋值给变量 var scene new THREE Scene 创建相机 Camera 在 thre
  • ThreadLocal与InheritableThreadLocal及线程池的影响

    在web开发中使用了ThreadLocal本地线程存储拦截器解析的用户信息 方便在下文代码中调用 但是在springboot中使用 Async开启异步操作时 就会造成 子线程无法拿到父本地线程数据 拿到一些脏数据 1 Inheritable
  • 为什么超凡先锋显示未选择服务器,超凡先锋画质不太流畅怎么弄 游戏画质设置方法介绍_超凡先锋...

    超凡先锋是一款逃离塔科夫玩法的射击游戏 这款游戏对玩家的手机配置需求还是比较高的 那么超凡先锋画质不太流畅怎么弄呢 下面我们就一起来看一下游戏画质设置方法介绍吧 一 画质设置步骤介绍 超凡先锋的优化制作的还是非常不错的 大家如果配置不足或者
  • c语言求阶乘和的流程图_Introduction to CSAPP(十四):流程控制指令与 C 语言条件判断与循环

    条件码 在之前的内容中 我们提到EFLAGS 寄存器中有一些条件码 这些条件码为流程控制的跳转提供了一定的能力 CF 进位标识 最近的操作使得最高位产生的了进位 ZF 零标识 最近的操作所得的结果为0 SF 符号标识 最近的操作所得的结果为
  • 。。。闯关

    还没写到难的地方 不过主要还是猜 前面过于简单后面感觉又太难 不太适合我这种菜鸟 不过还是可以学到东西的 先不写了 这里只是帮我简单记录一下思路 并非想破坏游戏体验 1 url 2 源码链接 3 源码链接 4 源码最底下或F12 5 根据提
  • idea远程调试线上jar包

    有时候本地代码没问题但在线上运行会报错 这时候可以使用idea的remote功能调试线上jar包 步骤1 步骤2 新建remote 步骤3 配置服务器ip和端口 并复制生成的JVM参数供之后使用 步骤4 打jar包 并将生成的jar包放到服
  • GPT-4:模型架构、训练方法与 Fine-tuning 详解

    本文将详细介绍 GPT 4 的模型结构 训练数据准备和微调方法 我们将深入了解 Transformer 架构 并学习如何准备训练数据和微调 GPT 4 模型 同时 我们还提供了相关代码示例以帮助您更好地理解和实践这些概念 希望本文能为您在使
  • Java EE 企业级应用 复习 Spring中Bean的管理

    Bean的实例化 什么是Bean的实例化 Spring容器自动地帮助我们生成对应的Bean对象 Bean的实例化方法 构造方法实例化 静态工厂实例化 实例工厂实例化 构造方法实例化 package com itheima public cl
  • http-server安装成功后,提示command not found

    版权声明 本文为博主原创文章 未经博主允许不得转载 http server安装成功后 提示command not found 如图所示 解决方法 执行vim zshrc 加上红框框住的内容 然后在项目目录下执行http server就可以了
  • 操作系统-在分页式管理方式下采用位示图来表示主存分配情况,实现主存空间的分配和回收。

    实验六 一 实验题目 在分页式管理方式下采用位示图来表示主存分配情况 实现主存空间的分配和回收 二 实验内容 1 分页式存储器把主存分成大小相等的若干块 作业的信息也按块的大小分页 作业装入主存时可把作业的信息按页分散存放在主存的空闲块中
  • UIUC同学Jia-Bin Huang收集的计算机视觉代码合集(ZZ)

    转自 http www cnblogs com idaidai archive 2012 03 01 2375800 html UIUC的Jia Bin Huang同学收集了很多计算机视觉方面的代码 链接如下 https netfiles