用于高光谱解混的噪声鲁棒子带分解盲信号分离

Y. Qian, Qi Wang
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引用次数: 2

摘要

高光谱解混可以看作是一个盲源分离(BSS)和/或独立分量分析(ICA)问题。提出了一种新的抗噪声子带分解BSS/ICA方法用于高光谱解混。子带分解BSS放宽了源信号相互独立的假设,在一些BSS应用中已被证明是成功的。然而,现有的子带分解和子带选择方法强调了子分量的“独立性”,而忽略了子分量“噪声”的影响。众所周知,大多数子带分解如小波变换和傅立叶变换已经成功地用于去噪,因此通过子带分解同时考虑独立性和噪声是可能的。本文提出了基于小波包变换的子带分解和基于独立性和噪声联合测度的子带选择排序方法。实验结果表明,该方法在高光谱解混中具有较好的应用前景。
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Noise-robust subband decomposition blind signal separation for hyperspectral unmixing
Hyperspectral unmixing can be considered as a blind source separation (BSS) and/or independent component analysis (ICA) problem. This paper presents a new noise-resistant subband decomposition BSS/ICA approach for hyperspectral unmixing. Subband decomposition BSS relaxes the assumption that the source signals are mutual independent, which has been proved successful in some BSS applications. However, the existing subband decomposition and subband selection methods emphasize the “independence” of sub-components, but ignore the impact of their “noise”. It is well known that most subband decomposition such as wavelet and fourier transforms have been successfully used for noise removal, so simultaneously considering independence and noise through subband decomposition is possible. In this paper, we propose wavelet package transform for subband decomposition, independence-and-noise joint measure based ranking method for subband selection. The experimental results indicate that the proposed methods are promising in hyperspectral unmixing.
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