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Noise estimation using a constrained sequential HMM IN log-spectral domain

机译:使用约束顺序HMM IN对数谱域进行噪声估计

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How to utilize the time correlation of speech/nonspeech presence is a crucial problem faced by noise estimators. The popular technique of exploiting such correlation is to smooth noisy spectra by using a temporal recursive filter with a time-varying smoothing factor. But this technique cannot warrant the statistical optimality. In theory, hidden Markov model (HMM) is more desirable than this technique. It can give an elaborate description of speech/nonspeech transition. Moreover, some theoretical frameworks, such as maximum likelihood (ML), are available for optimal estimation. This paper presents a constrained sequential HMM to model the time correlation of speech/nonspeech presence of an individual log-power sequence. Its parameter set is on-line adapted to varying signals based on a ML framework. We compared its performance with that of well-established algorithms by speech enhancement experiments. The results confirmed its promising performance.
机译:如何利用语音/非语音存在的时间相关性是噪声估计器面临的关键问题。利用这种相关性的流行技术是通过使用具有时变平滑因子的时间递归滤波器来平滑噪声频谱。但是这种技术不能保证统计的最优性。从理论上讲,隐马尔可夫模型(HMM)比该技术更为可取。它可以对语音/非语音转换进行详尽的描述。此外,一些理论框架,例如最大似然(ML),可用于最佳估计。本文提出了一种约束顺序HMM,以对单个对数幂序列的语音/非语音存在时间相关性进行建模。它的参数集可基于ML框架在线适应各种信号。通过语音增强实验,我们将其性能与完善的算法进行了比较。结果证实了其令人鼓舞的性能。

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