DocumentCode
2400818
Title
Blind source separation and deconvolution by dynamic component analysis
Author
Attias, H. ; Schreiner, C.E.
Author_Institution
Sloan Center for Theor. Neurobiol., California Univ., San Francisco, CA, USA
fYear
1997
fDate
24-26 Sep 1997
Firstpage
456
Lastpage
465
Abstract
We derive new unsupervised learning rules for blind separation of mixed and convolved sources. These rules are nonlinear in the signals and thus exploit high-order spatiotemporal statistics to achieve separation. The derivation is based on a global optimization formulation of the separation problem, yielding a stable algorithm. Different rules are obtained from frequency- and time-domain optimization. We illustrate the performance of this method by successfully separating convolutive mixtures of speech signals
Keywords
deconvolution; neural nets; optimisation; signal reconstruction; unsupervised learning; blind source separation; convolved sources; deconvolution; dynamic component analysis; frequency-domain optimization; global optimization; high-order spatiotemporal statistics; mixed sources; speech signals; time-domain optimization; unsupervised learning rules; Algorithm design and analysis; Blind source separation; Deconvolution; Filters; Frequency; Independent component analysis; Signal processing; Statistics; Time domain analysis; Unsupervised learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks for Signal Processing [1997] VII. Proceedings of the 1997 IEEE Workshop
Conference_Location
Amelia Island, FL
ISSN
1089-3555
Print_ISBN
0-7803-4256-9
Type
conf
DOI
10.1109/NNSP.1997.622427
Filename
622427
Link To Document