基于元音短期声学特征的说话人特征分析

M. Humayun, Junaid Shuja, P. E. Abas
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引用次数: 0

摘要

语音样本可以提供关于说话人特征的有价值的信息,包括他们的社会背景。说话者背景的口音变化反映了语音的相应声学特征,这些声学变化可以通过分析语音样本作为法医证据来协助追踪罪犯。语音口音识别最近在语音取证研究界得到了重要的考虑。然而,大多数研究都是利用声学特征的长期时间建模来进行口音分类,而忽略了特定音素发音的固定声学特征。本文分析了从英语元音语音片段的中心时间窗口提取的短期声学特征,用于口音识别。针对口音分类任务,比较了各种特征计算技术。研究发现,使用光谱特征作为输入比使用倒谱特征具有更好的性能,并且较低的滤波器对分类任务的贡献更显著。此外,还详细分析了时间窗持续时间和频本分辨率,以计算与重音识别有关的短期频谱特征。使用更长的持续时间通常需要更高的频率分辨率来优化分类性能。这些结果意义重大,因为它们显示了使用频谱特征进行说话人分析的好处,尽管在其他与语音相关的任务中,倒谱特征很受欢迎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speaker Profiling Based on the Short-Term Acoustic Features of Vowels
Speech samples can provide valuable information regarding speaker characteristics, including their social backgrounds. Accent variations with speaker backgrounds reflect corresponding acoustic features of speech, and these acoustic variations can be analyzed to assist in tracking down criminals from speech samples available as forensic evidence. Speech accent identification has recently received significant consideration in the speech forensics research community. However, most works have utilized long-term temporal modelling of acoustic features for accent classification and disregarded the stationary acoustic characteristics of particular phoneme articulations. This paper analyzes short-term acoustic features extracted from a central time window of English vowel speech segments for accent discrimination. Various feature computation techniques have been compared for the accent classification task. It has been found that using spectral features as an input gives better performance than using cepstral features, with the lower filters contributing more significantly to the classification task. Moreover, detailed analysis has been presented for time window durations and frequency bin resolution to compute short-term spectral features concerning accent discrimination. Using longer time durations generally requires higher frequency resolution to optimize classification performance. These results are significant, as they show the benefits of using spectral features for speaker profiling despite the popularity of cepstral features for other speech-related tasks.
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