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Model Adaptation based on HMM decomposition for Reverberant Speech Recognition

Publication Year :
2023

Abstract

The performance of a speech recognizer is degraded drastically in reverberant environments. The authors propose a novel algorithm which can model an observation signal by composition of HMMs of clean speech, noise and an acoustic transfer function. However, estimating HMM parameters of the acoustic transfer function is still a serious problem. In their previous paper, they measured real impulse responses of training positions in an experiment room. It is inconvenient and unrealistic to measure impulse responses for every possible new experiment room. The paper presents a new method for estimating HMM parameters of the acoustic transfer function from some adaptation data by using an HMM decomposition algorithm which is an inverse process of the HMM composition. Its effectiveness is confirmed by a series of speaker dependent and independent word recognition experiments on simulated distant-talking speech data<br />ICASSP1997: IEEE International Conference on Acoustics, Speech, and Signal Processing, April 21-24, 1997.

Details

Database :
OAIster
Notes :
Tetsuya, Takiguchi, Satoshi, Nakamura, Qiang, Huo, Kiyohiro, Shikano
Publication Type :
Electronic Resource
Accession number :
edsoai.on1378467254
Document Type :
Electronic Resource