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super-resolution-Regularization-

于 2021-05-13 发布 文件大小:3216KB
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代码说明:

  本程序包括了三个程序,L1范数正则化,L2范数正则化,Tikhonov正则化超分辨率重建。经反复测试,没有BUG。(The program includes three procedures, L1 norm regularization, L2 norm regularization, Tikhonov regularization super-resolution reconstruction. After repeated testing, no BUG.)

文件列表:

sr_正则化
.........\L1
.........\..\L1
.........\..\..\ComputeLKFlowParms.m,780,2010-05-11
.........\..\..\GaussianDownSample.m,688,2011-07-29
.........\..\..\GuassianPyramid.m,797,2011-07-29


.........\..\..\IterativeLKOpticalFlow.m,1342,2011-07-29
.........\..\..\L1GBP.m,1009,2011-05-09
.........\..\..\L1GD.m,2119,2011-07-29
.........\..\..\L1GetDiff.m,2119,2015-02-01
.........\..\..\L1GradientBackProject.m,1009,2015-02-01
.........\..\..\L1Test.m,2547,2015-02-01
.........\..\..\L1Test001.m,1710,2011-12-09
.........\..\..\L1TotalVariationSR.m,752,2015-02-01
.........\..\..\L1TVSR.m,752,2011-07-29
.........\..\..\LKOFlow
.........\..\..\.......\Affine
.........\..\..\.......\......\ComputeLKFlowParms.m,986,2010-05-11
.........\..\..\.......\......\GaussianDownSample.m,768,2010-05-11
.........\..\..\.......\......\GuassianPyramid.m,812,2010-05-11
.........\..\..\.......\......\IterativeLKOpticalFlow.m,1585,2010-05-11
.........\..\..\.......\......\PyramidalLKOpticalFlow.m,1947,2010-05-11
.........\..\..\.......\......\RegisterImageSeq.m,914,2010-05-11
.........\..\..\.......\......\ResampleImg.m,463,2010-05-11
.........\..\..\.......\ComputeLKFlowParms.asv,756,2011-07-29
.........\..\..\.......\ComputeLKFlowParms.m,780,2010-05-11

.........\..\..\.......\GaussianDownSample.asv,441,2011-07-27
.........\..\..\.......\GaussianDownSample.m,688,2011-07-29
.........\..\..\.......\GuassianPyramid.asv,797,2011-07-29
.........\..\..\.......\GuassianPyramid.m,797,2011-07-29

.........\..\..\.......\IterativeLKOpticalFlow.asv,1342,2011-07-29
.........\..\..\.......\IterativeLKOpticalFlow.m,1342,2011-07-29

.........\..\..\.......\PyramidalLKOpticalFlow.m,1790,2010-05-11
.........\..\..\.......\RegisterImageSeq.asv,437,2011-05-12
.........\..\..\.......\RegisterImageSeq.m,497,2011-05-10
.........\..\..\.......\ResampleImg.m,282,2010-05-11



.........\..\..\LR_g_4.bmp,30318,2015-01-31
.........\..\..\PSNR.m,3849,2011-06-24
.........\..\..\PyramidalLKOpticalFlow.m,1790,2010-05-11
.........\..\..\RegisterImageSeq.m,497,2011-05-10
.........\..\..\ResampleImg.m,282,2010-05-11
.........\..\..\TV.bmp,261686,2015-02-01
.........\..\..\TV_thismethod.bmp,261686,2015-02-01
.........\..\..\原始TV方法_PSNR.jpg,16336,2015-02-01
.........\..\..\本文方法_PSNR.jpg,17910,2015-02-01
.........\L2
.........\..\L2
.........\..\..\ComputeLKFlowParms.m,780,2010-05-11
.........\..\..\GaussianDownSample.m,768,2010-05-11
.........\..\..\GuassianPyramid.m,812,2010-05-11

.........\..\..\IterativeLKOpticalFlow.m,1466,2010-05-11
.........\..\..\L2GBP.m,944,2011-05-23
.........\..\..\L2GD.m,2114,2011-05-23
.........\..\..\L2Test.m,1869,2015-02-01
.........\..\..\L2TVSR.m,738,2011-05-23


.........\..\..\LKOFlow
.........\..\..\.......\Affine
.........\..\..\.......\......\ComputeLKFlowParms.m,986,2010-05-11
.........\..\..\.......\......\GaussianDownSample.m,768,2010-05-11
.........\..\..\.......\......\GuassianPyramid.m,812,2010-05-11
.........\..\..\.......\......\IterativeLKOpticalFlow.m,1585,2010-05-11
.........\..\..\.......\......\PyramidalLKOpticalFlow.m,1947,2010-05-11
.........\..\..\.......\......\RegisterImageSeq.m,914,2010-05-11
.........\..\..\.......\......\ResampleImg.m,463,2010-05-11
.........\..\..\.......\ComputeLKFlowParms.m,780,2010-05-11
.........\..\..\.......\GaussianDownSample.m,768,2010-05-11
.........\..\..\.......\GuassianPyramid.m,812,2010-05-11
.........\..\..\.......\IterativeLKOpticalFlow.m,1466,2010-05-11
.........\..\..\.......\PyramidalLKOpticalFlow.m,1790,2010-05-11
.........\..\..\.......\RegisterImageSeq.m,437,2010-09-13
.........\..\..\.......\ResampleImg.m,282,2010-05-11


.........\..\..\LR_g_3.bmp,30318,2015-01-31
.........\..\..\LR_g_4.bmp,30318,2015-01-31
.........\..\..\PSNR.m,3849,2011-06-24
.........\..\..\PyramidalLKOpticalFlow.m,1790,2010-05-11
.........\..\..\RegisterImageSeq.m,437,2010-09-13
.........\..\..\ResampleImg.m,282,2010-05-11
.........\Tikhonov
.........\........\Tikhonov
.........\........\........\ComputeLKFlowParms.m,780,2010-05-11
.........\........\........\disk.mat,72816,2010-06-03
.........\........\........\DTDZ.m,273,2010-07-06
.........\........\........\GaussianDownSample.m,768,2010-05-11
.........\........\........\GuassianPyramid.m,812,2010-05-11

.........\........\........\IterativeLKOpticalFlow.m,1466,2010-05-11
.........\........\........\LKOFlow

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