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INface_zip

于 2014-08-19 发布 文件大小:747KB
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下载积分: 1 下载次数: 6

代码说明:

  simple way to implement pca for beginner

文件列表:

INface_tool
...........\auxilary
...........\........\adjust_range.m,3983,2012-01-26
...........\........\compute_patch_library.m,3643,2009-08-27
...........\........\Contents.m,1232,2011-10-13
...........\........\gamma_correction.m,4717,2012-01-26
...........\........\highboostfilter.m,1957,2009-08-27
...........\........\highpassfilter.m,1438,2009-08-27
...........\........\lowpassfilter.m,2445,2009-08-27
...........\........\normalize8.m,4159,2012-01-26
...........\........\pca.m,7234,2009-08-27
...........\........\perform_lowdim_embedding.m,2575,2009-08-27
...........\........\perform_nl_means.m,3137,2009-08-27
...........\........\perform_nl_means_adap.m,3445,2009-08-27
...........\........\symmetric_extension.m,1176,2009-08-27
...........\........\threshold_filtering.m,5812,2012-01-26
...........\ChangeLog.txt,1085,2012-01-26
...........\check_install.m,28946,2012-01-26
...........\Contents.m,5111,2012-01-26
...........\demos
...........\.....\combin_demo.m,8653,2012-01-26
...........\.....\Contents.m,651,2011-10-13
...........\.....\histograms_demo.m,4894,2012-01-26
...........\.....\luminance_demo.m,5026,2012-01-26
...........\.....\make_new_method_demo.m,3866,2012-01-26
...........\.....\photometric_demo.m,7843,2012-01-26
...........\histograms
...........\..........\Contents.m,232,2011-10-13
...........\..........\fitt_distribution.m,6879,2012-01-26
...........\..........\rank_normalization.m,6224,2012-01-26
...........\INFace_license.txt,1391,2011-10-19
...........\INFace_manual.pdf,706819,2012-01-26
...........\install_INface.m,1623,2012-01-26
...........\mex
...........\...\config.h,5098,2007-05-03
...........\...\perform_nlmeans_mex.cpp,11983,2007-09-25
...........\...\perform_nlmeans_mex.mexw64,16896,2011-10-12
...........\...\perform_nlmeans_mex1.cpp,12382,2009-04-20
...........\...\perform_nlmeans_mex1.mexw64,17408,2011-10-12
...........\other
...........\.....\ACKNOWL1.bib,350,2011-09-23
...........\.....\ACKNOWL2.bib,311,2009-08-28
...........\.....\AN.bib,347,2009-08-28
...........\.....\ASR.bib,302,2009-08-28
...........\.....\DCT.bib,394,2009-08-28
...........\.....\GRF.bib,321,2011-10-13
...........\.....\HIST.bib,345,2009-08-28
...........\.....\LSSF.bib,332,2011-10-13
...........\.....\MSR.bib,338,2009-08-28
...........\.....\NLM.bib,323,2011-09-26
...........\.....\RET.bib,228,2012-01-26
...........\.....\RET.bib.bak,299,2012-01-26
...........\.....\SSQ.bib,303,2011-09-26
...........\.....\SSR.bib,294,2009-08-28
...........\.....\TT.bib,306,2011-10-10
...........\.....\WA.bib,270,2009-08-28
...........\.....\WD.bib,374,2011-09-23
...........\.....\WEB.bib,318,2011-10-13
...........\photometric
...........\...........\adaptive_nl_means_normalization.m,9960,2012-01-26
...........\...........\adaptive_single_scale_retinex.m,9198,2012-01-26
...........\...........\anisotropic_smoothing.m,11653,2012-01-26
...........\...........\anisotropic_smoothing_stable.m,12129,2012-01-26
...........\...........\Contents.m,2524,2012-01-26
...........\...........\DCT_normalization.m,7616,2012-01-26
...........\...........\dog.m,6721,2012-01-26
...........\...........\gradientfaces.m,6162,2012-01-26
...........\...........\homomorphic.m,6101,2009-08-24
...........\...........\isotropic_smoothing.m,10203,2012-01-26
...........\...........\lssf_norm.m,6546,2012-01-26
...........\...........\MIT_license.txt,1188,2010-01-29
...........\...........\multi_scale_retinex.m,5957,2012-01-26
...........\...........\multi_scale_self_quotient_image.m,6843,2012-01-26
...........\...........\multi_scale_weberfaces.m,7421,2012-01-26
...........\...........\nl_means_normalization.m,6946,2012-01-26
...........\...........\retina_model.m,8995,2012-01-23
...........\...........\single_scale_retinex.m,7618,2012-01-26
...........\...........\single_scale_self_quotient_image.m,7818,2012-01-26
...........\...........\steerable_gaussians.m,6919,2012-01-26
...........\...........\tantriggs.m,5782,2012-01-26
...........\...........\wavelet_denoising.m,7734,2012-01-26
...........\...........\wavelet_normalization.m,7173,2012-01-26
...........\...........\weberfaces.m,7433,2012-01-26
...........\postprocessors
...........\..............\Contents.m,220,2011-10-13
...........\..............\histtruncate.m,3584,2009-08-28
...........\..............\robust_postprocessor.m,4653,2012-01-26

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