Blind Source Separation Using Temporal Predictability
TL;DR: It is shown that this property can be used to recover source signals from a set of linear mixtures of those signals by finding an un-mixing matrix that maximizes a measure of temporal predictability for each recovered signal.
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Abstract: A measure of temporal predictability is defined and used to separate linear mixtures of signals. Given any set of statistically independent source signals, it is conjectured here that a linear mixture of those signals has the following property: the temporal predictability of any signal mixture is less than (or equal to) that of any of its component source signals. It is shown that this property can be used to recover source signals from a set of linear mixtures of those signals by finding an un-mixing matrix that maximizes a measure of temporal predictability for each recovered signal. This matrix is obtained as the solution to a generalized eigenvalue problem; such problems have scaling characteristics of O(N3), where N is the number of signal mixtures. In contrast to independent component analysis, the temporal predictability method requires minimal assumptions regarding the probability density functions of source signals. It is demonstrated that the method can separate signal mixtures in which each mixture is a linear combination of source signals with supergaussian, subgaussian, and gaussian probability density functions and on mixtures of voices and music.
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Citations
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•Proceedings Article
Blind Source Separation and Independent Component Analysis: A Review
Soo-Young Lee
- 01 Jan 2005
TL;DR: A review of BSS and ICA, including various algorithms for static and dynamic models and their applications, including several algorithms for dynamic models (convolutive mixtures) incorporating with sparseness or non-negativity constraints is presented.
Blind identification of full-field vibration modes from video measurements with phase-based video motion magnification
Yongchao Yang,Charles Dorn,Tyler Mancini,Zachary Talken,Garrett T. Kenyon,Charles R. Farrar,David Mascareñas +6 more
TL;DR: In this article, a multi-scale image processing method is applied on the frames of the video of a vibrating structure to extract the local pixel phases that encode local structural vibration, establishing a full-field spatio-temporal motion matrix.
349
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Independent component analysis: an introduction
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