A Trajectory-based Parallel Model Combination with a unified static and dynamic parameter compensation for noisy speech recognition

ASRU(2011)

引用 9|浏览31
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摘要
Parallel Model Combination (PMC) is widely used as a technique to compensate Gaussian parameters of a clean speech model for noisy speech recognition. The basic principle of PMC uses a log normal approximation to transform statistics of the data distribution between the cepstral domain and the linear spectral domain. Typically, further approximations are needed to compensate the dynamic parameters separately. In this paper, Trajectory PMC (TPMC) is proposed to compensate both the static and dynamic parameters. TPMC uses the explicit relationships between the static and dynamic features to transform the static and dynamic parameters into a sequence (trajectory) of static parameters, so that the log normal approximation can be applied. Experimental results on WSJCAM0 database corrupted with additive babble noise reveals that the proposed TPMC method gives promising improvements over PMC and VTS.
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关键词
trajectory-based parallel model combination,speech recognition,statistics,approximation theory,linear spectral domain,gaussian parameters,log normal approximation,cepstral domain,noise robustness,parallel model combination,trajectroy hmm,gaussian processes,trajectory pmc,noisy speech recognition,dynamic parameter compensation,log normal distribution,clean speech model,static parameters,data distribution,vts
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