A New Observation Model in the Logarithmic Mel Power Spectral Domain for the Automatic Recognition of Noisy Reverberant Speech

Audio, Speech, and Language Processing, IEEE/ACM Transactions  (2014)

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摘要
In this contribution we present a theoretical and experimental investigation into the effects of reverberation and noise on features in the logarithmic mel power spectral domain, an intermediate stage in the computation of the mel frequency cepstral coefficients, prevalent in automatic speech recognition (ASR). Gaining insight into the complex interaction between clean speech, noise, and noisy reverberant speech features is essential for any ASR system to be robust against noise and reverberation present in distant microphone input signals. The findings are gathered in a probabilistic formulation of an observation model which may be used in model-based feature compensation schemes. The proposed observation model extends previous models in three major directions: First, the contribution of additive background noise to the observation error is explicitly taken into account. Second, an energy compensation constant is introduced which ensures an unbiased estimate of the reverberant speech features, and, third, a recursive variant of the observation model is developed resulting in reduced computational complexity when used in model-based feature compensation. The experimental section is used to evaluate the accuracy of the model and to describe how its parameters can be determined from test data.
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关键词
computational complexity,reverberation,speech recognition,automatic speech recognition,background noise,clean speech,computational complexity,energy compensation,logarithmic mel power spectral domain,mel frequency cepstral coefficients,microphone input signals,model-based feature compensation schemes,noisy reverberant speech automatic recognition,noisy reverberant speech features,reverberation,Model-based feature compensation,observation model for reverberant and noisy speech,recursive observation model,robust automatic speech recognition
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