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:

 
这些代码很实用,可以让我们站在巨人的肩膀上~~
 

Topic

Resources

References

Feature Extraction

  1. D. Lowe. Distinctive Image Features from Scale-Invariant Keypoints, IJCV 2004. [PDF]
  2. Y. Ke and R. Sukthankar, PCA-SIFT: A More Distinctive Representation for Local Image Descriptors,CVPR, 2004. [PDF]
  3. J.M. Morel and G.Yu, ASIFT, A new framework for fully affine invariant image comparisonSIAM Journal on Imaging Sciences, 2009. [PDF]
  4. H. Bay, T. Tuytelaars and L. V. Gool SURF: Speeded Up Robust Features,ECCV, 2006. [PDF]
  5. K. Mikolajczyk, T. Tuytelaars, C. Schmid, A. Zisserman, J. Matas, F. Schaffalitzky, T. Kadir and L. Van Gool, A comparison of affine region detectorsIJCV, 2005. [PDF]
  6. J. Matas, O. Chum, M. Urba, and T. Pajdla. Robust wide baseline stereo from maximally stable extremal regionsBMVC, 2002. [PDF]
  7. A. C. Berg, T. L. Berg, and J. Malik. Shape matching and object recognition using low distortion correspondences. CVPR, 2005. [PDF]
  8. E. Shechtman and M. Irani. Matching local self-similarities across images and videos, CVPR, 2007. [PDF]
  9. T. Deselaers and V. Ferrari. Global and Efficient Self-Similarity for Object Classification and DetectionCVPR 2010. [PDF]
  10. N. Dalal and B. Triggs. Histograms of Oriented Gradients for Human DetectionCVPR 2005. [PDF]
  11. A. Oliva and A. Torralba. Modeling the shape of the scene: a holistic representation of the spatial envelopeIJCV, 2001. [PDF]
  12. S. Belongie, J. Malik and J. Puzicha. Shape matching and object recognition using shape contextsPAMI, 2002. [PDF]
  13. K. E. A. van de Sande, T. Gevers and Cees G. M. Snoek, Evaluating Color Descriptors for Object and Scene RecognitionPAMI, 2010.
  14. I. Laptev, On Space-Time Interest Points, IJCV, 2005. [PDF]
  15. J. Kim and K. Grauman, Boundary Preserving Dense Local RegionsCVPR 2011. [PDF]

Image Segmentation

  1. J. Shi and J Malik, Normalized Cuts and Image SegmentationPAMI, 2000 [PDF]
  2. X. Ren and J. Malik. Learning a classification model for segmentation.ICCV, 2003. [PDF]
  3. P. Felzenszwalb and D. Huttenlocher. Efficient Graph-Based Image SegmentationIJCV 2004. [PDF]
  4. D. Comaniciu, P Meer. Mean Shift: A Robust Approach Toward Feature Space AnalysisPAMI 2002. [PDF]
  5. P. Arbelaez, M. Maire, C. Fowlkes and J. Malik. Contour Detection and Hierarchical Image SegmentationPAMI, 2011. [PDF]
  6. A. Levinshtein, A. Stere, K. N. Kutulakos, D. J. Fleet, S. J. Dickinson, and K. Siddiqi, TurboPixels: Fast Superpixels Using Geometric FlowsPAMI 2009. [PDF]
  7. A. Vedaldi and S. Soatto, Quick Shift and Kernel Methodsfor Mode Seeking,ECCV, 2008. [PDF]
  8. R. Achanta, A. Shaji, K. Smith, A. Lucchi, P. Fua, and S. Susstrunk, SLIC Superpixels, EPFL Technical Report, 2010. [PDF]
  9. A. Y. Yang, J. Wright, S. Shankar Sastry, Y. Ma , Unsupervised Segmentation of Natural Images via Lossy Data CompressionCVIU, 2007. [PDF]
  10. S. Maji, N. Vishnoi and J. Malik, Biased Normalized CutCVPR 2011
  11. E. Akbas and N. Ahuja, “From ramp discontinuities to segmentation tree,”  ACCV 2009. [PDF]
  12. N. Ahuja, “A Transform for Multiscale Image Segmentation by Integrated Edge and Region Detection,” PAMI 1996 [PDF]
  13. M.-Y. Liu, O. Tuzel, S. Ramalingam, and R. Chellappa, Entropy Rate Superpixel Segmentation, CVPR 2011 [PDF]

Object Detection

  • A simple object detector with boosting [Project]

  • INRIA Object Detection and Localization Toolkit [1] [Project]

  • Discriminatively Trained Deformable Part Models [2] [Project]

  • Cascade Object Detection with Deformable Part Models [3] [Project]

  • Poselet [4] [Project]

  • Implicit Shape Model [5] [Project]

  • Viola and Jones's Face Detection [6] [Project]
  1. N. Dalal and B. Triggs. Histograms of Oriented Gradients for Human DetectionCVPR 2005. [PDF]
  2. P. Felzenszwalb, R. Girshick, D. McAllester, D. Ramanan.
    Object Detection with Discriminatively Trained Part Based ModelsPAMI, 2010 [PDF]
  3. P. Felzenszwalb, R. Girshick, D. McAllester. Cascade Object Detection with Deformable Part ModelsCVPR 2010 [PDF]
  4. L. Bourdev, J. Malik, Poselets: Body Part Detectors Trained Using 3D Human Pose AnnotationsICCV 2009 [PDF]
  5. B. Leibe, A. Leonardis, B. Schiele. Robust Object Detection with Interleaved Categorization and SegmentationIJCV, 2008. [PDF]
  6. P. Viola and M. Jones, Rapid Object Detection Using a Boosted Cascade of Simple FeaturesCVPR 2001. [PDF]

Saliency Detection

  • Itti, Koch, and Niebur' saliency detection [1] [Matlab code]

  • Frequency-tuned salient region detection [2] [Project]

  • Saliency detection using maximum symmetric surround [3] [Project]

  • Attention via Information Maximization [4] [Matlab code]

  • Context-aware saliency detection [5] [Matlab code]

  • Graph-based visual saliency [6] [Matlab code]

  • Saliency detection: A spectral residual approach. [7] [Matlab code]

  • Segmenting salient objects from images and videos. [8] [Matlab code]

  • Saliency Using Natural statistics. [9] [Matlab code]

  • Discriminant Saliency for Visual Recognition from Cluttered Scenes. [10] [Code]

  • Learning to Predict Where Humans Look [11] [Project]

  • Global Contrast based Salient Region Detection [12] [Project]
  1. L. Itti, C. Koch, and E. Niebur. A model of saliency-based visual attention for rapid scene analysisPAMI, 1998. [PDF]
  2. R. Achanta, S. Hemami, F. Estrada, and S. Susstrunk. Frequency-tuned salient region detection. In CVPR, 2009. [PDF]
  3. R. Achanta and S. Susstrunk. Saliency detection using maximum symmetric surround. In ICIP, 2010. [PDF]
  4. N. Bruce and J. Tsotsos. Saliency based on information maximization. InNIPS, 2005. [PDF]
  5. S. Goferman, L. Zelnik-Manor, and A. Tal. Context-aware saliency detection. In CVPR, 2010. [PDF]
  6. J. Harel, C. Koch, and P. Perona. Graph-based visual saliency. NIPS, 2007. [PDF]
  7. X. Hou and L. Zhang. Saliency detection: A spectral residual approach.CVPR, 2007. [PDF]
  8. E. Rahtu, J. Kannala, M. Salo, and J. Heikkila. Segmenting salient objects from images and videosCVPR, 2010. [PDF]
  9. L. Zhang, M. Tong, T. Marks, H. Shan, and G. Cottrell. Sun: A bayesian framework for saliency using natural statisticsJournal of Vision, 2008. [PDF]
  10. D. Gao and N. Vasconcelos, Discriminant Saliency for Visual Recognition from Cluttered ScenesNIPS, 2004. [PDF]
  11. T. Judd and K. Ehinger and F. Durand and A. Torralba, Learning to Predict Where Humans LookICCV, 2009. [PDF]
  12. M.-M. Cheng, G.-X. Zhang, N. J. Mitra, X. Huang, S.-M. Hu. Global Contrast based Salient Region DetectionCVPR 2011.

Image Classification

  1. K. Grauman and T. Darrell, The Pyramid Match Kernel: Discriminative Classification with Sets of Image FeaturesICCV 2005. [PDF]
  2. S. Lazebnik, C. Schmid, and J. Ponce. Beyond Bags of Features: Spatial Pyramid Matching for Recognizing Natural Scene CategoriesCVPR 2006[PDF]
  3. J. Wang, J. Yang, K. Yu, F. Lv, T. Huang, and Y. Gong. Locality-constrained Linear Coding for Image ClassificationCVPR, 2010 [PDF]
  4. J. Yang, K. Yu, Y. Gong, T. Huang, Linear Spatial Pyramid Matching using Sparse Coding for Image ClassificationCVPR, 2009 [PDF]
  5. M. Varma and A. Zisserman, A statistical approach to texture classification from single images, IJCV2005. [PDF]
  6. A. Vedaldi, V. Gulshan, M. Varma, and A. Zisserman, Multiple Kernels for Object DetectionICCV, 2009. [PDF]
  7. P. Gehler and S. Nowozin, On Feature Combination for Multiclass Object Detection, ICCV, 2009. [PDF]
  8. J. Tighe and S. Lazebnik, SuperParsing: Scalable Nonparametric Image
    Parsing with Superpixels
    , ECCV 2010. [PDF]

Category-Independent Object Proposal

  • Objectness measure [1] [Code]

  • Parametric min-cut [2] [Project]

  • Object proposal [3] [Project]

  1. B. Alexe, T. Deselaers, V. Ferrari, What is an Object?CVPR 2010 [PDF]
  2. J. Carreira and C. Sminchisescu. Constrained Parametric Min-Cuts for Automatic Object SegmentationCVPR 2010. [PDF]
  3. I. Endres and D. Hoiem. Category Independent Object Proposals, ECCV 2010. [PDF]

MRF

  1. Y. Boykov, O. Veksler and R. Zabih, Fast Approximate Energy Minimization via Graph Cuts, PAMI 2001 [PDF]

Shadow Detection

  • Shadow Detection using Paired Region [Project]

  • Ground shadow detection [Project]

  1. R. Guo, Q. Dai and D. Hoiem, Single-Image Shadow Detection and Removal using Paired Regions, CVPR 2011 [PDF]
  2. J.-F. Lalonde, A. A. Efros, S. G. Narasimhan, Detecting Ground Shadowsin Outdoor Consumer PhotographsECCV 2010 [PDF]

Optical Flow

  1. B.D. Lucas and T. Kanade, An Iterative Image Registration Technique with an Application to Stereo VisionIJCAI 1981. [PDF]
  2. J. Shi, C. Tomasi, Good Feature to TrackCVPR 1994. [PDF]
  3. C. Liu. Beyond Pixels: Exploring New Representations and Applications for Motion Analysis. Doctoral ThesisMIT 2009. [PDF]
  4. B.K.P. Horn and B.G. Schunck, Determining Optical FlowArtificial Intelligence 1981. [PDF]
  5. M. J. Black and P. Anandan, A framework for the robust estimation of optical flow, ICCV 93. [PDF]
  6. D. Sun, S. Roth, and M. J. Black, Secrets of optical flow estimation and their principlesCVPR 2010. [PDF]
  7. T. Brox, J. Malik, Large displacement optical flow: descriptor matching in variational motion estimationPAMI, 2010 [PDF]
  8. T. Brox, A. Bruhn, N. Papenberg, J. Weickert, High accuracy optical flow estimation based on a theory for warpingECCV 2004 [PDF]

Object Tracking

  • Particle filter object tracking [1] [Project]

  • KLT Tracker [2-3] [Project]

  • MILTrack [4] [Code]

  • Incremental Learning for Robust Visual Tracking [5] [Project]

  • Online Boosting Trackers [6-7] [Project]

  • L1 Tracking [8] [Matlab code]

  1. P. Perez, C. Hue, J. Vermaak, and M. Gangnet. Color-Based Probabilistic Tracking ECCV, 2002. [PDF]
  2. B.D. Lucas and T. Kanade, An Iterative Image Registration Technique with an Application to Stereo VisionIJCAI 1981. [PDF]
  3. J. Shi, C. Tomasi, Good Feature to TrackCVPR 1994. [PDF]
  4. B. Babenko, M. H. Yang, S. Belongie, Robust Object Tracking with Online Multiple Instance LearningPAMI 2011 [PDF]
  5. D. Ross, J. Lim, R.-S. Lin, M.-H. Yang, Incremental Learning for Robust Visual TrackingIJCV 2007 [PDF]
  6. H. Grabner, and H. Bischof, On-line Boosting and Vision, CVPR 2006 [PDF]
  7. H. Grabner, C. Leistner, and H. Bischof, Semi-supervised On-line Boosting for Robust TrackingECCV 2008 [PDF]
  8. X. Mei and H. Ling, Robust Visual Tracking using L1 Minimization, ICCV, 2009. [PDF]

Image Matting

  • Closed Form Matting [Code]

  • Spectral Matting [Project]

  • Learning-based Matting [Code]

  1. A. Levin D. Lischinski and Y. WeissA Closed Form Solution to Natural Image MattingPAMI 2008 [PDF]
  2. A. Levin, A. Rav-Acha, D. Lischinski. Spectral MattingPAMI 2008. [PDF]
  3. Y. Zheng and C. Kambhamettu, Learning Based Digital MattingICCV 2009 [PDF]

Bilateral Filtering

  • Fast Bilateral Filter [Project]

  • Real-time O(1) Bilateral Filtering [Code]

  • SVM for Edge-Preserving Filtering [Code]

  1. Q. Yang, K.-H. Tan and N. Ahuja,  Real-time O(1) Bilateral Filtering
    CVPR 2009. [PDF]
  2. Q. Yang, S. Wang, and N. Ahuja, SVM for Edge-Preserving Filtering
    CVPR 2010. [PDF]

Image Denoising

 

Image Super-Resolution

  • MRF for image super-resolution [Project]

  • Multi-frame image super-resolution [Project]

  • UCSC Super-resolution [Project]

  • Sprarse coding super-resolution [Code]

 

Image Deblurring

  • Eficient Marginal Likelihood Optimization in Blind Deconvolution [Code]

  • Analyzing spatially varying blur [Project]

  • Radon Transform [Code]

 

Image Quality Assessment

  1. L. Zhang, L. Zhang, X. Mou and D. Zhang, FSIM: A Feature Similarity Index for Image Quality AssessmentTIP 2011. [PDF]
  2. N. Damera-Venkata, and T. D. Kite, W. S. Geisler, B. L. Evans, and A. C. Bovik,Image Quality Assessment Based on a Degradation ModelTIP 2000. [PDF]
  3. Z. Wang, A. C. Bovik, H. R. Sheikh and E. P. Simoncelli, Image quality assessment: from error visibility to structural similarity, TIP 2004. [PDF]
  4. B. Ghanem, E. Resendiz, and N. Ahuja, Segmentation-Based Perceptual Image Quality Assessment (SPIQA)ICIP 2008. [PDF]

Density Estimation

  • Kernel Density Estimation Toolbox [Project]
 

Dimension Reduction

 

Sparse Coding

   

Low-Rank Matrix Completion

   

Nearest Neighbors matching

 

Steoreo

  1. D. Scharstein and R. Szeliski. A taxonomy and evaluation of dense two-frame stereo correspondence algorithmsIJCV 2002 [PDF]

Structure from motion

  1. N. Snavely, S. M. Seitz, R. Szeliski. Photo Tourism: Exploring image collections in 3DSIGGRAPH, 2006. [PDF]

Distance Transformation

  • Distance Transforms of Sampled Functions [1] [Project]
  1. P. F. Felzenszwalb and D. P. Huttenlocher. Distance transforms of sampled functionsTechnical report, Cornell University, 2004. [PDF]

Chamfer Matching

  • Fast Directional Chamfer Matching [Code]
  1. M.-Y. Liu, O. Tuzel, A. Veeraraghavan, and R. Chellappa, Fast Directional Chamfer MatchingCVPR 2010 [PDF]

Clustering

 

Classification

 

Regression

  • SVM

  • RVM

  • GPR

 

Multiple Kernel Learning (MKL)

  1. S. Sonnenburg, G. Rätsch, C. Schäfer, B. Schölkopf . Large scale multiple kernel learningJMLR, 2006. [PDF]
  2. F. Orabona and L. Jie. Ultra-fast optimization algorithm for sparse multi kernel learning. ICML, 2011. [PDF]
  3. F. Orabona, L. Jie, and B. Caputo. Online-batch strongly convex multi kernel learningCVPR, 2010. [PDF]
  4. A. Rakotomamonjy, F. Bach, S. Canu, and Y. Grandvalet. SimplemklJMRL, 2008. [PDF]

Multiple Instance Learning (MIL)

  1. C. Leistner, A. Saffari, and H. Bischof, MIForests: Multiple-Instance Learning with Randomized TreesECCV 2010. [PDF]
  2. Z. Fu, A. Robles-Kelly, and J. Zhou, MILIS: Multiple instance learning with instance selectionPAMI 2010. [PDF]
  3. Y. Chen, J. Bi and J. Z. Wang, MILES: Multiple-Instance Learning via Embedded Instance SelectionPAMI 2006 [PDF]
  4. Yixin Chen and James Z. Wang, Image Categorization by Learning and Reasoning with RegionsJMLR 2004. [PDF]

Other Utilities

  • Code for downloading Flickr images, by James Hays [Code]

  • The Lightspeed Matlab Toolbox by Tom Minka [Code]

  • MATLAB Functions for Multiple View Geometry [Code]

  • Peter's Functions for Computer Vision [Code]

  • Statistical Pattern Recognition Toolbox [Code]
 

Useful Links (dataset, lectures, and other softwares)

Conference Information

Papers

Datasets

Lectures

Source Codes

UIUC同学Jia-Bin Huang收集的计算机视觉代码合集的更多相关文章

  1. [ZZ] UIUC同学Jia-Bin Huang收集的计算机视觉代码合集

    UIUC同学Jia-Bin Huang收集的计算机视觉代码合集 http://blog.sina.com.cn/s/blog_4a1853330100zwgm.htmlv UIUC的Jia-Bin H ...

  2. 计算机视觉与模式识别代码合集第二版two

    Topic Name Reference code Image Segmentation Segmentation by Minimum Code Length AY Yang, J. Wright, ...

  3. 计算机视觉与模式识别代码合集第二版three

    计算机视觉与模式识别代码合集第二版three     Topic Name Reference code Optical Flow Horn and Schunck's Optical Flow   ...

  4. 计算机视觉与模式识别代码合集第二版one

    Topic Name Reference code Feature Detection, Feature Extraction, and Action Recognition Space-Time I ...

  5. 这些年,我收集的JavaScript代码

    这些年,我收集的JavaScript代码(一) http://www.cnblogs.com/jscode/archive/2012/07/25/2605395.html 这些年,我收集的JavaSc ...

  6. 实时收集Storm日志到ELK集群

    背景 我们的storm实时流计算项目已经上线几个月了,由于各种原因迟迟没有进行监控,每次出现问题都要登录好几台机器,然后使用sed,shell,awk,vi等各种命令来查询原因,效率非常低下,而且有些 ...

  7. Filebeat使用内置的mysql模块收集日志存储到ES集群并使用kibana存储

    Filebeat内置了不少的模块,可以直接使用他们对日志进行收集,支持的模块如下: [root@ELK-chaofeng07 logstash]# filebeat modules list Enab ...

  8. [收集]MVC3 HTML辅助方法集录

    1.跳转链接 @Html.ActionLink("linkText","actionName",routeValues,htmlAttributes) e.g& ...

  9. 这些年,我收集的JavaScript代码(一)

    一.取URL中的参数 function getParameterByName(name) { var match = RegExp('[?&]' + name + '=([^&]*)' ...

随机推荐

  1. HTTP协议,操作方法的幂等、安全性

    google了一些中文的资料, 基本了解了幂等是怎么回事儿. 备忘一下. PUT,DELETE操作是幂等的.所谓幂等是指不管进行多少次操作,结果都一样.比如我用PUT修改一篇文章,然后在做同样的操作, ...

  2. php中 -> 和 => 和 :: 的用法 以及 self 和 $this 的用法

    => 数组中 用于数组的 key 和 value之间的关系例如:$a = array( '0' => '1', '2' => '4',); echo $a['0'];echo $a[ ...

  3. SAP web 开发 (第二篇 bsp 开发 mvc模式 Part2 )

    单击第一个图标,第一个图标突出显示,单击第二个图标,第一个变灰,第二个突出显示,反之一样.单击history读取历史记录. Controller ZCL_SUS_C_ORDER_CHANGE 1.   ...

  4. HDU5127 神坑题---vector 、 list 、 deque 的用法区别

    题意:三个操作 1  a b : 队列中加入(x = a, y = b); -1  a b : 队列中减去(x = a, y = b); 0  p q :从队列的数对中查询哪一对x,y能够让 p * ...

  5. 实时刷新Winform中Label的Text

    最直白的例子: private void btnStart_Click(object sender, EventArgs e) { ; ) { labelTime.Text = i.ToString( ...

  6. Map/Reduce个人实战--生成数据测试集

    背景: 在大数据领域, 由于各方面的原因. 有时需要自己来生成测试数据集, 由于测试数据集较大, 因此采用Map/Reduce的方式去生成. 在这小编(mumuxinfei)结合自身的一些实战经历, ...

  7. Node.js高级编程读书笔记 - 6 应用程序构建和调试 - Never

    Explanation 现阶段console.log(...),util.inspect(...), JSON.stringify(...)在控制台输出已经够用了[2015/07/19]. 单元测试隶 ...

  8. JavaScript对象属性赋值操作的逻辑

    对象进行属性赋值操作时,其执行逻辑如下所示: 1. 当前对象中是否有该属性?有,进行赋值操作:没有,进行下一步判断. 2. 对象的原型链中是否有该属性?没有,在当前对象上创建该属性,并赋值:有,进行下 ...

  9. 练习2:雨淋湿了一道题,9个数字只能看清楚4个,第一个肯定不是1 [X * (Y3 + Z)]^2 = 8MN9,求出各个数字

    题目上的X代表的未知数,不一定是同一个数字. 其实这道题,直接一推敲答案就出来了,首先,积德尾数是9,说明 X*(Y3 + Z)的值尾数是3,3的因子只有1和3,所以X只有1和3候选,但是题目说第一个 ...

  10. Git的配置及常用命令

    Git配置 git config --global user.name "<username>" git config --global user.email &quo ...