DocumentCode
917222
Title
A stochastic approximation method for waveform cluster center generation
Author
Steingrandt, William J. ; Yau, Stephen S.
Volume
18
Issue
2
fYear
1972
fDate
3/1/1972 12:00:00 AM
Firstpage
262
Lastpage
274
Abstract
A method is presented that detects behavioral transients in waveforms. A structure is defined that accepts waveforms as inputs and generates a sequence of symbols representing the sequence of transients present in the waveform. This structure is developed by generalizing an unsupervised learning algorithm to the time-varying case. The algorithm accepts a sequence of unlabeled waveforms to find cluster centers associated with the transients. Clustering is assumed to be with respect to an arbitrary distance measure. This measure is assumed to satisfy differentiability and regularity requirements. The algorithm is shown to converge based on assumptions concerning a unique optimum. This is done by the application of a stochastic-approximation theorem to a gradient-following technique. The resulting algorithm is applied to a problem in speech processing. The structure resulting from the learning algorithm is compared to the standard linguistic phonetic structure.
Keywords
Pattern clustering methods; Speech processing; Stochastic approximation; Approximation methods; Bandwidth; Clustering algorithms; Notice of Violation; Process design; Sampling methods; Signal generators; Silver; Speech recognition; Stochastic processes;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.1972.1054790
Filename
1054790
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