Two-step images deblurring via multiple priors
碩士 === 國立清華大學 === 資訊工程學系 === 104 === Deblurring form a single blurred image is a challenge task in computer vision. It is an ill-posed problem to estimate the unknown blur kernel and recover the original image. There are many significant deblurring methods toward the natural images; however, few of...
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ndltd-TW-104NTHU53920732017-08-27T04:30:16Z http://ndltd.ncl.edu.tw/handle/82935138551664201001 Two-step images deblurring via multiple priors 利用多個先驗條件進行兩階段去模糊 Chen, Jun Hong 陳俊宏 碩士 國立清華大學 資訊工程學系 104 Deblurring form a single blurred image is a challenge task in computer vision. It is an ill-posed problem to estimate the unknown blur kernel and recover the original image. There are many significant deblurring methods toward the natural images; however, few of them are not able to perform well on face images. Based on L_0 norm prior, we propose a two-step method for the images deblurring. The proposed method does not require any facial dataset to initialize the gradient of contours or any complex filtering strategies. In first step, we combine L_0 norm prior with our local smooth prior to predict the blur kernel. With simple Gaussian filtering, we could maintain the smooth region in the sharp image. In second step, refine the previous kernel result. In order to discard low intensity pixels (seemed to be noises) on kernel, we impose the sparsity on the kernel with L_0 norm regularization. Experimental results demonstrate that our proposed algorithm perform well on the facial images. Chang, Long Wen 張隆紋 2016 學位論文 ; thesis 38 en_US |
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碩士 === 國立清華大學 === 資訊工程學系 === 104 === Deblurring form a single blurred image is a challenge task in computer vision. It is an ill-posed problem to estimate the unknown blur kernel and recover the original image. There are many significant deblurring methods toward the natural images; however, few of them are not able to perform well on face images. Based on L_0 norm prior, we propose a two-step method for the images deblurring. The proposed method does not require any facial dataset to initialize the gradient of contours or any complex filtering strategies. In first step, we combine L_0 norm prior with our local smooth prior to predict the blur kernel. With simple Gaussian filtering, we could maintain the smooth region in the sharp image. In second step, refine the previous kernel result. In order to discard low intensity pixels (seemed to be noises) on kernel, we impose the sparsity on the kernel with L_0 norm regularization. Experimental results demonstrate that our proposed algorithm perform well on the facial images.
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Chang, Long Wen |
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Chang, Long Wen Chen, Jun Hong 陳俊宏 |
author |
Chen, Jun Hong 陳俊宏 |
spellingShingle |
Chen, Jun Hong 陳俊宏 Two-step images deblurring via multiple priors |
author_sort |
Chen, Jun Hong |
title |
Two-step images deblurring via multiple priors |
title_short |
Two-step images deblurring via multiple priors |
title_full |
Two-step images deblurring via multiple priors |
title_fullStr |
Two-step images deblurring via multiple priors |
title_full_unstemmed |
Two-step images deblurring via multiple priors |
title_sort |
two-step images deblurring via multiple priors |
publishDate |
2016 |
url |
http://ndltd.ncl.edu.tw/handle/82935138551664201001 |
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