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A waveform generation model-based approach for segregation of monaural mixed sound

机译:基于波形生成模型的单声道混合声音分离方法

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摘要

The present paper describes a novel method for segregating monaural concurrent sounds. In a real environment, there exist several types of sounds, including periodic, aperiodic and impulsive sounds, and several sounds will usually occur simultaneously. Recognition of the sounds requires the ability to model various types of sounds and segregate the concurrent sounds. The proposed method adopts a waveform generation model consisting of an auto-regressive process and a hidden Markov model (AR-HMM) as a template model and achieves segregation of monaural concurrent sounds based on the mixed AR-HMMs. Experiments were conducted to confirm the feasibility of the proposed method using five Japanese vowel sounds and ten types of non-speech sounds. The experimental results indicate that the proposed method is effective for the segregation of various types of sounds.
机译:本文介绍了一种分离单声道并发声音的新方法。在实际环境中,存在几种类型的声音,包括周期性,非周期性和脉冲声音,并且通常会同时出现几种声音。声音的识别需要能够对各种类型的声音建模并分离并发声音的能力。提出的方法采用由自回归过程和隐马尔可夫模型(AR-HMM)组成的波形生成模型作为模板模型,并基于混合AR-HMM实现单声道并发声音的分离。进行了实验,以证实使用五种日本元音和十种非语音的声音所提出的方法的可行性。实验结果表明,该方法对于分离各种类型的声音是有效的。

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