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objectness1

于 2011-04-18 发布 文件大小:26300KB
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代码说明:

说明:  提取图像中的显著对象部分,就是人视觉感知的主要部分,运行的是demo.m(Extraction of the image part of a significant object is the main part of the human visual perception, running demo.m)

文件列表:

objectness





..........\005925.jpg,66628,2007-01-10
..........\006144.jpg,102104,2007-01-09
..........\009934.jpg,95505,2007-01-09
..........\categorize.asv,909,2010-09-25
..........\categorize.m,1248,2010-09-25
..........\computeAP.asv,170,2010-10-28
..........\computeAP.m,493,2010-10-31
..........\computeArea.m,202,2010-04-30
..........\computeIntegralHistogramMex.mexw32,8704,2010-06-27
..........\computeIntegralHistogramMex.mexw64,9216,2010-07-03
..........\computeIntegralImage.m,319,2010-04-26
..........\computeIntegralImageScores.m,522,2010-04-27
..........\computeIntersectionArea.m,342,2010-04-30
..........\computePascalScore.m,272,2010-04-30
..........\computePRCurve.asv,6494,2011-03-23
..........\computePRCurve.m,6654,2011-03-31
..........\computePRCurve4MSRA.m,5979,2010-11-04
..........\computeQuantMatrix.m,451,2010-12-09
..........\computeScoreContrast.mexw32,10240,2010-06-27
..........\computeScoreContrast.mexw64,10752,2010-07-03
..........\computeScores.asv,12224,2010-07-03
..........\computeScores.m,12485,2010-10-22
..........\curve.jpg,21853,2010-07-13
..........\Data
..........\....\CClikelihood.mat,2258,2010-05-04
..........\....\EDlikelihood.mat,1767,2010-05-04
..........\....\MSlikelihood.mat,4433,2010-05-03
..........\....\params.mat,3955,2010-06-19
..........\....\params1.mat,3948,2010-06-29
..........\....\SSlikelihood.mat,1713,2010-05-04
..........\....\testparams.mat,3977,2010-07-12
..........\....\yourData
..........\defaultParameters.mat,3944,2010-05-05
..........\defaultParams.m,1818,2010-05-05
..........\demo.m,137,2011-02-27
..........\demo1.jpg,133599,2009-08-21
..........\demo2.jpg,131145,2009-09-13
..........\detect.asv,3141,2010-07-12
..........\detect.m,3644,2010-09-07
..........\dog.jpg,68059,2010-07-13
..........\drawBoxes.m,839,2011-04-11
..........\evalMSRA_sp.asv,2954,2010-11-05
..........\evalMSRA_sp.m,3431,2010-11-05
..........\evaluateCategory.asv,4305,2010-10-17
..........\evaluateCategory.m,4858,2010-11-09
..........\evaluateGTScale.asv,4899,2010-10-19
..........\evaluateGTScale.m,5066,2010-10-19
..........\evaluateMSRAGTScale.asv,6235,2010-10-27
..........\evaluateMSRAGTScale.m,6453,2010-10-29
..........\Evaluation
..........\..........\maintest.asv,5306,2010-11-04
..........\..........\maintest.m,5335,2010-11-04
..........\..........\newdetect.m,2214,2010-11-02
..........\..........\postdetection.asv,6484,2010-11-09
..........\..........\postdetection.m,6565,2010-11-09
..........\..........\visualizeCategory.m,4991,2010-11-05
..........\..........\visualizeCorrect.asv,6333,2010-11-07
..........\..........\visualizeCorrect.m,6363,2010-11-07
..........\..........\visualizeMSRA.m,4671,2010-11-07
..........\..........\visualizeRes.asv,5783,2011-03-17
..........\..........\visualizeRes.m,5757,2011-03-17
..........\evaluation.asv,7110,2011-02-23
..........\evaluation.m,7013,2011-04-01
..........\framework.asv,5642,2010-07-13
..........\framework.m,5392,2010-09-10
..........\generateWindows.m,2725,2010-04-28
..........\globalnms.m,930,2010-09-29
..........\gray2rgb.m,265,2010-04-28
..........\IJCVSegment
..........\...........\Debug
..........\...........\.....\IJCVSegment.exe,87552,2010-06-28
..........\...........\.....\IJCVSegment.ilk,548692,2010-06-28
..........\...........\.....\IJCVSegment.pdb,797696,2010-06-28
..........\...........\IJCVSegment

..........\...........\...........\convolve.h,1940,2006-12-28
..........\...........\...........\Debug
..........\...........\...........\.....\BuildLog.htm,12082,2010-06-28
..........\...........\...........\.....\IJCVSegment.exe.embed.manifest,663,2010-06-28
..........\...........\...........\.....\IJCVSegment.exe.embed.manifest.res,728,2010-06-28
..........\...........\...........\.....\IJCVSegment.exe.intermediate.manifest,621,2010-06-28
..........\...........\...........\.....\mt.dep,69,2010-06-28
..........\...........\...........\.....\segment.obj,238103,2010-06-28
..........\...........\...........\.....\vc90.idb,207872,2010-06-28
..........\...........\...........\.....\vc90.pdb,241664,2010-06-28
..........\...........\...........\disjoint-set.h,1857,2006-12-28
..........\...........\...........\filter.h,2973,2006-12-28
..........\...........\...........\IJCVSegment.vcproj,4571,2010-06-28
..........\...........\...........\IJCVSegment.vcproj.20091116-1624.fengjie.user,1429,2010-06-28
..........\...........\...........\IJCVSegment.vcproj.MSLPA.v-jifen.user,1429,2010-06-28
..........\...........\...........\image.h,2294,2006-12-28
..........\...........\...........\imconv.h,4926,2006-12-28
..........\...........\...........\imutil.h,1648,2006-12-28
..........\...........\...........\misc.h,1731,2006-12-28

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