2012
DOI: 10.1016/j.sigpro.2012.05.019
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A geometric approach to blind separation of nonnegative and dependent source signals

Abstract: Blind source separation (BSS) consists in processing a set of observed mixed signals to separate them into a set of original components. Most of the current blind separation methods assumes that the source signals are "as statistically independent as possible". In many real-world cases, however, source signals are considerably dependent. In order to cope with such signals, we proposed in [1] a geometric method that separates dependent signals provided that they are nonnegative and locally orthogonal. This pape… Show more

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Cited by 13 publications
(13 citation statements)
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“…In this section, we provide simulation examples to illustrate the performance of the proposed CG-based algorithm, in comparison with the NICA algorithm [7], the DIEM algorithm [12], the DEDS algorithm [35], the CAMNS-LP algorithm [36], and the VCA algorithm [37]. With [36], the source separation performance is measured by the sum square error (M-SSE) index defined as follows:…”
Section: Simulation Resultsmentioning
confidence: 99%
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“…In this section, we provide simulation examples to illustrate the performance of the proposed CG-based algorithm, in comparison with the NICA algorithm [7], the DIEM algorithm [12], the DEDS algorithm [35], the CAMNS-LP algorithm [36], and the VCA algorithm [37]. With [36], the source separation performance is measured by the sum square error (M-SSE) index defined as follows:…”
Section: Simulation Resultsmentioning
confidence: 99%
“…However, these methods have local minima problem that results from using the alternative least-square iteration optimization scheme, and thus, BSS is not a guarantee. Similarly, by using the nonnegativity of sources, the method in [35] does not depend on statistical features of the sources. Specifically, it is shown [35] that one can obtain a finite set of candidate source signals that contain the original source signals, and the latter can be identified if they are the most linearly independent (MLI) among the respective set of candidate source signals.…”
Section: Introductionmentioning
confidence: 99%
“…The main contribution of this paper is the use of an enhanced wavelet packet transforms instead of STFT and FFT, together with a well suited geometric unmixing algorithm [8]. This work is motivated by the one presented in [9], where it was demonstrated that the focus on the sparseness of the sources and their mixtures, once they are projected onto a proper space of sparse representation.…”
Section: Blind Source Separation Bss Process Consists In Separatingmentioning
confidence: 99%
“…the model described by Equation (1), we briefly describe a geometric algorithm dedicated to separating nonnegative source signals that may be highly correlated [8]. In addition to being nonnegative, the source signals must also verify a second hypothesis which can be stated as follows Hypothesis 1.…”
Section: The Unmixing Algorithmmentioning
confidence: 99%
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