AN EXTENSION OF THE ICA MODEL USING LATENT VARIABLES
Source Separation and Applications
Presented by: Marc Castella, Author(s): Selwa Rafi, Marc Castella, Wojciech Pieczynski, Institut Telecom / Telecom SudParis, France
The Independent Component Analysis (ICA) model is extended to the case where the components are not necessarily independent: depending on a hidden latent process, the unknown components of the linear mixture are assumed either mutually independent or dependent. We propose for this model a separation method which combines: (i) a classical ICA separation performed using the set of samples whose components are conditionally independent, and (ii) a method for estimation of the latent process. The latter task is performed by Iterative Conditional Estimation (ICE). It is an estimation technique in the case of incomplete data, which is particularly appealing because it requires only weak conditions. Finally, simulations validate our method and show that the separation quality is improved for sources generated according to our model.
Lecture Information
Recorded: | 2011-05-26 10:10 - 10:30, Club B |
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Added: | 22. 6. 2011 05:47 |
Number of views: | 35 |
Video resolution: | 1024x576 px, 512x288 px |
Video length: | 0:19:19 |
Audio track: | MP3 [6.53 MB], 0:19:19 |
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