基于维纳滤波和独立分量分析的噪声混合图像盲分离

Hong-yan Li, Qing-hua Zhao, Jing Zhao, Bao-jin Xiao
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引用次数: 5

摘要

盲源分离问题近年来在信号处理和无监督神经学习领域受到广泛关注。在目前的方法中,加性噪声是可以忽略的,因此可以从考虑中省略。为了适用于实际场景,盲源分离方法必须均匀地处理噪声的存在。在这篇论文中,我们提出了当测量信号被加性噪声污染时,采用维纳滤波和独立分量分析(ICA)进行盲信号分离的方法。我们先用维纳滤波去噪,然后用FASTICA算法对去噪后的图像进行分离。结果表明,该方法可以降低噪声的影响,提高分离图像的信噪比,从而对原始图像进行更新。关键词:独立分量分析,盲源分离,维纳滤波
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Blind Separation of Noisy Mixed Images Based on Wiener Filtering and Independent Component Analysis
Blind source separation problem has recently received a great deal of attention in signal processing and unsupervised neural learning. In the current approaches, the additive noise is negligible so that it can be omitted from the consideration. To be applicable in realistic scenarios, blind source separation approaches should deal evenly with the presence of noise. In this contribution, we propose approaches to blind signal separation by wiener filtering and independent component analysis (ICA) when the measured signals are contaminated by additive noise. We first use wiener filtering to de-noise and then use the FASTICA algorithm to separate the de-noised images. The result shows that this method may reduce the affect of noise and improve the signal-noise ratio (SNR) of separation images, accordingly renew the original images. Keywords-Independent component analysis, Blind sources separation, wiener filteringt
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