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Integrating multiple observations for model-based single-microphone speech separation with conditional random fields

机译:集成多个观察值以用于基于模型的单麦克风语音分离和条件随机场

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A single-microphone speech separation framework based on conditional random fields (CRFs) is proposed in this paper. Unlike factorial HMM, CRF does not have the conditional independence assumption on observations, thus different types of observations from the speech mixture can be integrated into the models through feature functions. Similar to factorial HMM, there is the statistical independence assumption on sources. Under this assumption, the two-source single-microphone speech separation problem can be expressed by two independent linear-chain CRFs. The separation problem becomes two pattern recognition problems, with respect to CRF models of the two sources. Experimental results show that by integrating initial separation outputs from factorial HMM with log power spectrum, fundamental frequency and speaker likelihoods of the mixture, CRF separation framework consistently improves the results from factorial HMM in terms of SNR, segmental SNR and PESQ.
机译:提出了一种基于条件随机场(CRF)的单麦克风语音分离框架。与阶乘HMM不同,CRF对观察没有条件独立性假设,因此可以通过特征函数将语音混合中的不同类型的观察集成到模型中。与阶乘HMM相似,在来源上也有统计独立性假设。在此假设下,两源单麦克风语音分离问题可由两个独立的线性链CRF表示。相对于两个源的CRF模型,分离问题成为两个模式识别问题。实验结果表明,通过将阶乘HMM的初始分离输出与对数功率谱,基频和混合物的说话人可能性进行集成,CRF分离框架从SNR,分段SNR和PESQ方面持续改善了阶乘HMM的结果。

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