xiang-secondordercyclos-2017.pdf (2.52 MB)
Second-order cyclostationary statistics-based blind source extraction from convolutional mixtures
journal contribution
posted on 2017-01-01, 00:00 authored by Yong XiangYong Xiang, D Peng, Indivarie Ubhayaratne, Bernard RolfeBernard Rolfe, Michael PereiraMichael PereiraBlind source extraction (BSE) aims to extract the source of interest (SOI) from the outputs of a mixing system, which is a challenging problem. A property existing in many signals is cyclostationarity and this property has been widely exploited in BSE. While various cyclostationarity-based BSE methods have been reported in the literature, they usually require the mixing system to be instantaneous. In this paper, we address BSE in the context that the mixing system is convolutional. Specifically, a new BSE method is developed to extract cyclostationary source signal from the outputs of a multiple-input-multiple-output finite-impulse-response mixing system. It is shown that if the SOI has a unique cyclostationary frequency, it can be recovered from the measured data. The effectiveness of the proposed BSE method is demonstrated by simulation results.
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Journal
IEEE accessVolume
5Pagination
2011 - 2019Publisher
Institute of Electrical and Electronics EngineersLocation
Piscataway, United StatesPublisher DOI
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eISSN
2169-3536Language
engPublication classification
C Journal article; C1 Refereed article in a scholarly journalCopyright notice
2017 IEEEUsage metrics
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