黄文生,陈功,成旭,朱锡芳.稀疏分解算法在薄膜缺陷去噪中的应用[J].表面技术,2015,44(2):123-128.
HUANG Wen-sheng,CHEN Gong,CHENG Xu,ZHU Xi-fang.Application of Sparse Decomposition Algorithm in Denoising of Film Defects[J].Surface Technology,2015,44(2):123-128
稀疏分解算法在薄膜缺陷去噪中的应用
Application of Sparse Decomposition Algorithm in Denoising of Film Defects
投稿时间:2014-08-28  修订日期:2015-02-20
DOI:10.16490/j.cnki.issn.1001-3660.2015.02.024
中文关键词:  稀疏分解  锂电池薄膜  缺陷图像  中值滤波
英文关键词:sparse decomposition  lithium battery film  defect image  median filter
基金项目:国家自然科学基金资助项目(61475027);江苏省产学研联合创新资金研究项目( BY2014040);江苏省自然科学基金资助项目(BK20130245);常州市光电子材料与器件重点实验室项目(20130694)
作者单位
黄文生 常州工学院, 常州 213022 
陈功 常州工学院, 常州 213022 
成旭 常州工学院, 常州 213022 
朱锡芳 常州工学院, 常州 213022 
AuthorInstitution
HUANG Wen-sheng Changzhou Institute of Technology, Changzhou 213022, China 
CHEN Gong Changzhou Institute of Technology, Changzhou 213022, China 
CHENG Xu Changzhou Institute of Technology, Changzhou 213022, China 
ZHU Xi-fang Changzhou Institute of Technology, Changzhou 213022, China 
摘要点击次数:
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中文摘要:
      目的 实现锂电池薄膜表面缺陷特征的有效提取。 方法 采用稀疏分解算法实现表面去噪,即通过选取合适的原子函数,在过完备字典中对含有点噪声、高斯噪声、椒盐噪声和加乘噪声背景下的缺陷图像进行稀疏分解迭代,通过观察法得到终止迭代值作为经验值,并将该经验值用于特定噪声背景下的稀疏分解终止迭代条件,得到去噪后的缺陷图像。 最后将该方法与中值滤波技术进行比较。 结果 稀疏分解的去噪性能远优于中值滤波,对锂电池薄膜缺陷有很好的还原性。 结论 稀疏分解算法能够较好地去除锂电池薄膜图像中的噪声,从而识别出锂电池薄膜缺陷。
英文摘要:
      Objective To effectively extract the defect features on the surface of lithium battery film. Methods Surface de-noising was realized by sparse decomposition algorithm, i. e. , the best atomic function was selected, and sparse decomposition iteration was conducted for defect images with point noise, gaussian noise, salt and pepper noise, as well as additive and multiplicative noise in the over-complete dictionary. The terminating iteration value was got by observation and used as the experience value as the sparse decomposition iteration termination condition for denoising under specific background noise, in order to obtain the denoised defect image. Finally, this method was compared with the median filtering technology. Results Sparse decomposition denoising showed much better performance than the median filter, and had a good recovery for defects in lithium battery film. Conclusion Sparse decomposition algorithm could well remove the noises in lithium battery film image to identify the defects of lithium battery film.
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