A second-order blind source separation method for bilinear mixtures

被引:0
作者
Lina Jarboui
Yannick Deville
Shahram Hosseini
Rima Guidara
Ahmed Ben Hamida
Leonardo T. Duarte
机构
[1] Toulouse University,Institut de Recherche en Astrophysique et Planétologie (IRAP)
[2] CNRS-OMP,Advanced Technologies for Medicine and Signals (ATMS)
[3] Sfax University,School of Applied Sciences
[4] ENIS,undefined
[5] University of Campinas (UNICAMP),undefined
来源
Multidimensional Systems and Signal Processing | 2018年 / 29卷
关键词
Blind Source Separation; Second-order Statistics; Bilinear mixing model;
D O I
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中图分类号
学科分类号
摘要
In this paper, we are interested in the problem of Blind Source Separation using a Second-order Statistics (SOS) method in order to separate autocorrelated and mutually independent sources mixed according to a bilinear (BL) model. In this context, we propose a new approach called Bilinear Second-order Blind Source Separation, which is an extension of linear SOS methods, devoted to separate sources present in BL mixtures. These sources, called extended sources, include the actual sources and their products. We first study the statistical properties of the different extended sources, in order to verify the assumption of identifiability when the actual sources are zero-mean and when they are not. Then, we present the different steps performed in order to estimate these actual centred sources and to extract the actual mixing parameters. The obtained results using artificial mixtures of synthetic and real sources confirm the effectiveness of the new proposed approach.
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页码:1153 / 1172
页数:19
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