Title :
Simple mixture model for sparse overcomplete ICA
Author :
Davies, M. ; Mitianoudis, N.
Author_Institution :
Univ. of London, UK
Abstract :
The use of mixture of Gaussians (MoGs) for noisy and overcomplete independent component analysis (ICA) when the source distributions are very sparse is explored. The sparsity model can often be justified if an appropriate transform, such as the modified discrete cosine transform, is used. Given the sparsity assumption, a number of simplifying approximations are introduced to the observation density that avoid the exponential growth of mixture components. An efficient clustering algorithm is derived whose complexity grows linearly with the number of sources and it is shown that it is capable of performing reasonable separation.
Keywords :
Gaussian distribution; discrete cosine transforms; independent component analysis; signal representation; efficient clustering algorithm; independent component analysis; mixture component; mixture of Gaussian; modified discrete cosine transform; reasonable separation performing algorithm; sparse overcomplete ICA mixture model; sparse source distribution; sparsity model;
Journal_Title :
Vision, Image and Signal Processing, IEE Proceedings -
DOI :
10.1049/ip-vis:20040304