短时间瞬时频率和带宽特征的语音识别

P. Tsiakoulis, A. Potamianos, D. Dimitriadis
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引用次数: 10

摘要

本文研究了自动语音识别中调制相关特征和归一化谱矩的性能。我们的重点是振幅加权瞬时频率和带宽的短时平均值,在mel间隔滤波器组的每个子带计算。在以前的研究中已经提出了类似的特征,并成功地将其与mfcc结合起来用于语音和说话人识别。我们的目标是研究这些特性的独立性能。首先,实验表明,所提出的特征在频域中仅适度相关,并且与mfccc不同,它们不需要转换到倒谱域。接下来,研究了滤波器组参数(滤波器数量和滤波器重叠),并与mfccc的特征进行了比较。结果表明,频率相关特征在清洁条件下的表现至少与mfccc一样好,并且在嘈杂条件下产生更好的结果;AURORA3西班牙语任务的相对错误率降低了50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-time instantaneous frequency and bandwidth features for speech recognition
In this paper, we investigate the performance of modulation related features and normalized spectral moments for automatic speech recognition. We focus on the short-time averages of the amplitude weighted instantaneous frequencies and bandwidths, computed at each subband of a mel-spaced filterbank. Similar features have been proposed in previous studies, and have been successfully combined with MFCCs for speech and speaker recognition. Our goal is to investigate the stand-alone performance of these features. First, it is experimentally shown that the proposed features are only moderately correlated in the frequency domain, and, unlike MFCCs, they do not require a transformation to the cepstral domain. Next, the filterbank parameters (number of filters and filter overlap) are investigated for the proposed features and compared with those of MFCCs. Results show that frequency related features perform at least as well as MFCCs for clean conditions, and yield superior results for noisy conditions; up to 50% relative error rate reduction for the AURORA3 Spanish task.
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