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在http://szeliski.org/Book包含了更新的数据集和软件,请同样访问他。
C.1 数据集
一个关键就是用富有挑战和典型的数据集来测试你算法的可靠性。当有背景或者他人的结果是可行的,这种测试可能甚至包含更多的信息(和质量更好)。
经过这些年,大量的数据集已经被提出来用于测试和评估计算机视觉算法。许多这些数据集和软件被编入了计算机视觉的主页。一些更新的网址,像CVonline
(http://homepages.inf.ed.ac.uk/rbf/CVonline ), VisionBib.Com (http://datasets.visionbib.com/ ), and Computer Vision online (http://computervisiononline.com/ ), 有更多最新的数据集和软件。
下面,我列出了一些用的最多的数据集,我将它们让章节排列以便它们联系更紧密。
第二章:图像信息
CUReT: Columbia-Utrecht 反射率和纹理数据库Reflectance and TextureDatabase,http://www1.cs.columbia.edu/CAVE/software/curet/ (Dana, van Ginneken, Nayaret al. 1999).
Middlebury Color Datasets:不同摄像机拍摄的图像,注册后用于研究不同的摄像机怎么改变色域和彩色registeredcolor images taken by different cameras to study how they transform gamuts andcolors, http://vision.middlebury.edu/color/data/ Chakrabarti, Scharstein, and Zickler 2009).
第三章:图像处理
Middlebury test datasets forevaluating MRF minimization/inference algorithms评估隐马尔科夫随机场最小化和推断算法,
http://vision.middlebury.edu/MRF/results/ (Szeliski, Zabih, Scharstein et al. 2008).
第四章:特征检测和匹配
Affine Covariant Featuresdatabase(反射协变的特征数据集) for evaluating feature detector and descriptor matching quality andrepeatability(评估特征检测和描述匹配的质量和定位精度), http://www.robots.ox.ac.uk/~vgg/research/affine/
(Miko-lajczyk and Schmid 2005;Mikolajczyk, Tuytelaars, Schmid et al. 2005).
Database of matched imagepatches for learning (图像斑块匹配学习数据库)and feature descriptor evaluation(特征描述评估数据库),
http://cvlab.epfl.ch/~brown/patchdata/patchdata.html
(Winder and Brown 2007;Hua,Brown, and Winder 2007).
第五章;分割
BerkeleySegmentation Dataset(分割数据库) and Benchmark of 1000 images labeled by 30 humans,(30个人标记的1000副基准图像)along with an evaluation,http://www.eecs.berkeley.edu/Research/Projects/CS/vision/grouping/segbench/(Martin, Fowlkes, Tal et al.2001).
Weizmann segmentationevaluation database of 100 grayscale images with ground truth segmentations,
http://www.wisdom.weizmann.ac.il/~vision/Seg EvaluationDB/index.html
(Alpert, Galun, Basri et al. 2007).
第八章:稠密运动估计
TheMiddlebury optic flow evaluation(光流评估) Web site,http://vision.middlebury.edu/flow/data/
(Baker,Scharstein, Lewis et al. 2009).
The Human-Assisted MotionAnnotation database,(人类辅助运动数据库)
http://people.csail.mit.edu/celiu/motionAnnotation/ (Liu, Freeman, Adelson etal. 2008)
第十章:计算机摄像学
High DynamicRange radiance(辐射)maps, http://www.debevec.org/Research/HDR/
(De-bevecand Malik 1997).
Alpha matting evaluation Website, http://alphamatting.com/ (Rhemann, Rother, Wang
et al. 2009).
第十一章:Stereo correspondence立体对应
Middlebury Stereo Datasets andEvaluation, http://vision.middlebury.edu/stereo/(Scharstein
and Szeliski 2002).
StereoClassification(立体分类) and Performance Evaluation(性能评估) of different aggregation(聚类) costs for stereo matching(立体匹配),http://www.vision.deis.unibo.it/spe/SPEHome.aspx (Tombari, Mat-
toccia, Di Stefano et al.2008).
Middlebury Multi-View StereoDatasets,
http://vision.middlebury.edu/mview/data/ (Seitz,Curless, Diebel etal. 2006).
Multi-view and Oxford Collegesbuilding reconstructions,
http://www.robots.ox.ac.uk/~vgg/data/data-mview.html .
Multi-View Stereo Datasets, http://cvlab.epfl.ch/data/strechamvs/ (Strecha, Fransens,
and Van Gool 2006).
Multi-View Evaluation, http://cvlab.epfl.ch/~strecha/multiview/ (Strecha, von Hansen,
Van Gool et al. 2008).
第十二章:3D重建
HumanEva: synchronized video(同步视频) and motion capture (动作捕捉)dataset for evaluation ofarticulated human motion, http://vision.cs.brown.edu/humaneva/ Sigal, Balan, and Black 2010).
第十三章:图像渲染
The (New) Stanford Light FieldArchive, http://lightfield.stanford.edu/
(Wilburn, Joshi,Vaish et al.2005).
Virtual Viewpoint Video:multi-viewpoint video with per-frame depth maps,