DocumentCode
1484135
Title
Gabor expansion for adaptive echo cancellation
Author
Lu, Youbong ; Morris, Joel M.
Volume
16
Issue
2
fYear
1999
fDate
3/1/1999 12:00:00 AM
Firstpage
68
Lastpage
80
Abstract
A good echo cancellation algorithm should have a fast convergence rate, small steady-state residual echo, and less implementation cost. The normalized least mean square (NLMS) adaptive filtering algorithm may not achieve this goal. We show that using the Gabor expansion is a way to achieve this goal. For direct digital signal processing compatibility the Gabor expansion introduced in this paper is for discrete-time signals, although the Gabor expansion also can be used for continuous-time signals. The Gabor expansion can be defined as a discrete-time signal representation in the joint time-frequency domain of a weighted sum of the collection of functions (known as the synthesis functions). There are several design issues in the echo canceller based on the Gabor expansion: the design of the analysis functions for the far-end speech, the design of the analysis functions for the near-end signal containing the echo plus the near-end speech, the design of the adaptive filters in the subsignal path, and the design of the synthesis functions. All the adaptive filters are designed using identical NLMS adaptive filtering algorithms
Keywords
adaptive filters; adaptive signal processing; echo suppression; filtering theory; least mean squares methods; signal representation; speech processing; time-frequency analysis; Gabor expansion; NLMS adaptive filtering algorithms; adaptive echo cancellation; adaptive filters; analysis functions; continuous-time signals; digital signal processing; discrete-time signal representation; echo cancellation algorithm; far-end speech; fast convergence rate; implementation cost; joint time-frequency domain; near-end signal; near-end speech; normalized least mean square; small steady-state residual echo; subsignal path; synthesis functions; weighted sum; Adaptive filters; Echo cancellers; Filtering algorithms; Signal analysis; Signal design; Signal processing; Signal processing algorithms; Signal synthesis; Speech analysis; Speech synthesis;
fLanguage
English
Journal_Title
Signal Processing Magazine, IEEE
Publisher
ieee
ISSN
1053-5888
Type
jour
DOI
10.1109/79.752052
Filename
752052
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