Constrained blind source separation : frequency domain independent component analysis with reference

Semi-blind separation of signals is useful for many applications in signal and image processing. Independent Component Analysis (ICA) method incorporates certain a priori knowledge of the interested sources and has been shown to be very useful in particular applications where the frequency of the...

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Main Author: Chen, Wenda.
Other Authors: Rajapakse Jagath Chandana
Format: Final Year Project
Language:English
Published: 2009
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Online Access:http://hdl.handle.net/10356/15530
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-155302023-03-03T20:44:36Z Constrained blind source separation : frequency domain independent component analysis with reference Chen, Wenda. Rajapakse Jagath Chandana School of Computer Engineering Bioinformatics Research Centre DRNTU::Engineering::Computer science and engineering::Computing methodologies::Pattern recognition Semi-blind separation of signals is useful for many applications in signal and image processing. Independent Component Analysis (ICA) method incorporates certain a priori knowledge of the interested sources and has been shown to be very useful in particular applications where the frequency of the estimated signal is known. While time-domain ICA needs to assume instantaneous mixtures and independent sources, frequency-domain ICA (FICA) is especially useful for solving convolutive mixtures of source signals since it can transform time domain convolution to a multiplication in the frequency domain. However, the permutation of the sources is exagerated in FICA because the individual demixing operations are used in different frequency bins and leads to different orders in the reconstruction process. In this report, we show how ICA with Reference (ICA-R) is extended to the frequency domain and convolutive mixtures as FICA-R, effectively solving the permutation problem in FICA while enhancing the optimization convergence using reference signals. We demonstrated the performance of our technique on synthetic data and real EEG and speech datasets. The results indicate that our proposed Frequency-domain ICA-R (FICA-R) is more effective and efficient than other FICAs and time-domain ICA-R in both convolutive and other types of mixtures. Bachelor of Engineering (Computer Engineering) 2009-05-08T04:01:15Z 2009-05-08T04:01:15Z 2009 2009 Final Year Project (FYP) http://hdl.handle.net/10356/15530 en Nanyang Technological University 54 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering::Computing methodologies::Pattern recognition
spellingShingle DRNTU::Engineering::Computer science and engineering::Computing methodologies::Pattern recognition
Chen, Wenda.
Constrained blind source separation : frequency domain independent component analysis with reference
description Semi-blind separation of signals is useful for many applications in signal and image processing. Independent Component Analysis (ICA) method incorporates certain a priori knowledge of the interested sources and has been shown to be very useful in particular applications where the frequency of the estimated signal is known. While time-domain ICA needs to assume instantaneous mixtures and independent sources, frequency-domain ICA (FICA) is especially useful for solving convolutive mixtures of source signals since it can transform time domain convolution to a multiplication in the frequency domain. However, the permutation of the sources is exagerated in FICA because the individual demixing operations are used in different frequency bins and leads to different orders in the reconstruction process. In this report, we show how ICA with Reference (ICA-R) is extended to the frequency domain and convolutive mixtures as FICA-R, effectively solving the permutation problem in FICA while enhancing the optimization convergence using reference signals. We demonstrated the performance of our technique on synthetic data and real EEG and speech datasets. The results indicate that our proposed Frequency-domain ICA-R (FICA-R) is more effective and efficient than other FICAs and time-domain ICA-R in both convolutive and other types of mixtures.
author2 Rajapakse Jagath Chandana
author_facet Rajapakse Jagath Chandana
Chen, Wenda.
format Final Year Project
author Chen, Wenda.
author_sort Chen, Wenda.
title Constrained blind source separation : frequency domain independent component analysis with reference
title_short Constrained blind source separation : frequency domain independent component analysis with reference
title_full Constrained blind source separation : frequency domain independent component analysis with reference
title_fullStr Constrained blind source separation : frequency domain independent component analysis with reference
title_full_unstemmed Constrained blind source separation : frequency domain independent component analysis with reference
title_sort constrained blind source separation : frequency domain independent component analysis with reference
publishDate 2009
url http://hdl.handle.net/10356/15530
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