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Model adaptation based on HMM decomposition for reverberant speech recognition

机译:基于HMM分解的模型自适应回响语音识别

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The performance of a speech recognizer is degraded drastically in reverberant environments. The authors propose a novel algorithm which can model an observation signal by composition of HMMs of clean speech, noise and an acoustic transfer function. However, estimating HMM parameters of the acoustic transfer function is still a serious problem. In their previous paper, they measured real impulse responses of training positions in an experiment room. It is inconvenient and unrealistic to measure impulse responses for every possible new experiment room. The paper presents a new method for estimating HMM parameters of the acoustic transfer function from some adaptation data by using an HMM decomposition algorithm which is an inverse process of the HMM composition. Its effectiveness is confirmed by a series of speaker dependent and independent word recognition experiments on simulated distant-talking speech data.
机译:在混响环境中,语音识别器的性能会大大降低。作者提出了一种新颖的算法,该算法可以通过清晰语音,噪声和声音传递函数的HMM组成对观察信号进行建模。然而,估计声传递函数的HMM参数仍然是一个严重的问题。在他们以前的论文中,他们测量了实验室中训练位置的实际冲激响应。测量每个可能的新实验室的脉冲响应是不方便且不切实际的。本文提出了一种新的方法,通过使用HMM分解算法从一些自适应数据中估计声学传递函数的HMM参数,该算法是HMM组成的逆过程。通过对模拟的远距离语音数据进行一系列与说话者相关的和独立的单词识别实验,证实了其有效性。

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