Temporal modulation normalization for robust speech feature extraction and recognition

Speech signals are produced by the articulatory movements with a certain modulation structure constrained by the regular phonetic sequences. This modulation structure encodes most of the speech intelligibility information that can be used to discriminate the speech from noise. In this study, we prop...

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Veröffentlicht in:Multimedia tools and applications 2011-03, Vol.52 (1), p.187-199
Hauptverfasser: Lu, Xugang, Matsuda, Shigeki, Unoki, Masashi, Nakamura, Satoshi
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container_title Multimedia tools and applications
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creator Lu, Xugang
Matsuda, Shigeki
Unoki, Masashi
Nakamura, Satoshi
description Speech signals are produced by the articulatory movements with a certain modulation structure constrained by the regular phonetic sequences. This modulation structure encodes most of the speech intelligibility information that can be used to discriminate the speech from noise. In this study, we proposed a noise reduction algorithm based on this speech modulation property. Two steps are involved in the proposed algorithm: one is the temporal modulation contrast normalization, another is the modulation events preserved smoothing. The purpose for these processing is to normalize the modulation contrast of the clean and noisy speech to be in the same level, and to smooth out the modulation artifacts caused by noise interferences. Since our proposed method can be used independently for noise reduction, it can be combined with the traditional noise reduction methods to further reduce the noise effect. We tested our proposed method as a front-end for robust speech recognition on the AURORA-2J data corpus. Two advanced noise reduction methods, ETSI advanced front-end (AFE) method, and particle filtering (PF) with minimum mean square error (MMSE) estimation method, are used for comparison and combinations. Experimental results showed that, as an independent front-end processor, our proposed method outperforms the advanced methods, and as combined front-ends, further improved the performance consistently than using each method independently.
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source SpringerNature Journals
subjects Algorithms
Analysis
Computer Communication Networks
Computer Science
Data Structures and Information Theory
Energy
Experiments
Filtering
Fourier transforms
Least mean squares algorithm
Methods
Modulation
Multimedia computer applications
Multimedia Information Systems
Noise
Noise reduction
Special Purpose and Application-Based Systems
Speech
Studies
Temporal logic
Voice recognition
title Temporal modulation normalization for robust speech feature extraction and recognition
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