线性、梅尔和反梅尔滤波器组在自动语音识别中的作用

H. Kathania, S. Shahnawazuddin, Waquar Ahmad, Nagaraj Adiga
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引用次数: 3

摘要

在自动语音识别(ASR)中,在前端语音参数化过程中,功率谱通常被扭曲到mel尺度。这是因为人类对声音的感知是非线性的。mel滤波器组为低频内容提供更好的分辨率,而在高频范围内发生更大程度的平均。本文提出的工作旨在研究线性、梅尔和反梅尔滤波器组在语音识别中的作用。众所周知,当语音数据来自像儿童这样的高音调说话者时,在高频区域有大量的相关信息。因此,通过Mel-filterbank对该范围内的信息进行下采样会降低识别性能。另一方面,在这种情况下,使用逆mel或线性滤波器组预计会更有效。在本研究中也得到了实验验证。为此,研究人员开发了一套针对成人语音的ASR系统,并使用成人和儿童说话者的数据进行测试。当使用线性或反梅尔滤波器组时,儿童和成年女性的语音识别率都有显著提高。使用线性滤波器的结果是比基线相对提高21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Role of Linear, Mel and Inverse-Mel Filterbank in the Context of Automatic Speech Recognition
In the context of automatic speech recognition (ASR), the power spectrum is generally warped to the Mel-scale during front-end speech parameterization. This is motivated by the fact that, human perception of sound is nonlinear. The Mel-filterbank provide better resolution for low-frequency contents while a greater degree of averaging happens in the high-frequency range. The work presented in this paper aims at studying the role of linear, Mel and inverse-Mel filterbanks in the context of speech recognition. It is well known that, when speech data is from high-pitched speakers like children, there is a significant amount of relevant information in the high-frequency region. Hence, down-sampling the information in that range through Mel-filterbank reduces the recognition performance. On the other hand, employing inverse-Mel or linear-filterbanks are expected to be more effective in such cases. The same has been experimentally validated in this work. To do so, an ASR system is developed on adults' speech and tested using data from adult as well as child speakers. Significantly improved recognition rates are noted for children's as well adult females' speech when linear or inverse-Mel filterbank is used. The use of linear filters results in a relative improvement of 21% over the baseline.
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