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基于改进固定点ICA算法的图像盲分离
引用本文:侯艳艳.基于改进固定点ICA算法的图像盲分离[J].佳木斯大学学报,2009,27(1).
作者姓名:侯艳艳
作者单位:枣庄学院计算机科学系,山东枣庄,277160  
摘    要:独立向量分析根据信源统计独立特性对观测信号进行分离运算,目前采用较多的是固定点独立分量分析(FastICA).考虑到图像信号分离中,图像信号复杂多样,信息量大的特点,采用改进固定点ICA算法对图像进行分离,克服了采用固定点ICA算法计算量大、收敛速度慢的缺点.文章采用随机提取的独立图像做实验,取得了稳定性较强的效果.

关 键 词:独立向量分析  负熵  牛顿迭代  概率密度函数

Blind Separation Based on Improved Fixed-point ICA Learning Algorithm
HOU Yan-yan.Blind Separation Based on Improved Fixed-point ICA Learning Algorithm[J].Journal of Jiamusi University(Natural Science Edition),2009,27(1).
Authors:HOU Yan-yan
Institution:Department of Computer Science;Zaozhuang University;Zaozhuang 277160;China
Abstract:Signals were separated through Independent Component Analysis(ICA) based on independences of the observed signal.Fixed-point independent Component Analysis algorithm is widely used nowadays.Considering complexity,diversity and much information of figure signal,an improved Fast ICA algorithm was used to separate the image signal,overcoming the large amount of calculation and the slow convergence of Fixed ICA algorithm.Some experiments were done with random images and achieved the stability of the results.
Keywords:independent component analysis  negentropy  Newton iterative algorithm  probability density function  
本文献已被 CNKI 维普 万方数据 等数据库收录!
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