Image Denoising via Improved Sparse Coding
Author(s) -
Xiaoqiang Lu,
Haoliang Yuan,
Pingkun Yan,
Luoqing Li,
Xuelong Li
Publication year - 2011
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.25.74
Subject(s) - neural coding , k svd , noise reduction , computer science , dictionary learning , pattern recognition (psychology) , coding (social sciences) , artificial intelligence , sparse approximation , noise (video) , image (mathematics) , image denoising , noise measurement , algorithm , mathematics , statistics
This paper presents a novel dictionary learning method for image denoising, which removes zero-mean independent identically distributed additive noise from a given image. Choosing noisy image itself to train an over-complete dictionary, the dictionary trained by traditional sparse coding methods contains noise information. Through mathematical derivation of equation, we found that a lower bound of dictionary is related with the level of noise in dictionary learning. The proposed idea is to take advantage of the noise information for designing a sparse coding algorithm called improved sparse coding (ISC), which effectively suppresses the noise influence for training a dictionary. This denoising framework utilizes the effective \udmethod, which is based on sparse representations over trained dictionaries. Acquiring an over-complete dictionary by ISC mainly includes three stages. Firstly, we utilize \udK-means method to group the noisy image patches. Secondly, each dictionary is trained by ISC in corresponding class. Finally, an over-complete dictionary is merged \udby these dictionaries. Theory analysis and experimental results both demonstrate that the proposed method yields excellent performance
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