Rees Julia M, Regunath Gavita, Whiteside Sandra P, Wadnerkar Meghana B, Cowell Patricia E
Department of Applied Mathematics, Hicks Building, Hounsfield Road, University of Sheffield, Sheffield S37RH, UK.
Med Eng Phys. 2008 Sep;30(7):865-71. doi: 10.1016/j.medengphy.2007.10.006. Epub 2007 Dec 3.
The purpose of this study was to adapt wavelet analysis as a tool for discriminating speech samples taken from healthy subjects across two biological states. Speech pressure waveforms were drawn from a study on effects of hormone fluctuations across the menstrual cycle on language functions. Speech samples from the vowel portion of the syllable 'pa', taken at the low- and high-hormone phases of the menstrual cycle, were extracted for analysis. Initial analysis applied Fourier transforms to examine the fundamental and formant frequencies. Wavelet analysis was used to investigate spectral differences at a more microbehavioural level. The key finding showed that wavelet coefficients for the fundamental frequency of speech samples taken from the high-hormone phase had larger amplitudes than those from the low-hormone phase. This study provided evidence for differences in speech across the menstrual cycle that affected the vowel portion of syllables. This evidence complements existing data on the temporal features of speech that characterise the consonant portion of syllables. Wavelet analysis provides a new tool for examination of behavioural differences in speech linked to hormonal variation.
本研究的目的是采用小波分析作为一种工具,以区分从处于两种生理状态的健康受试者采集的语音样本。语音压力波形取自一项关于月经周期中激素波动对语言功能影响的研究。从月经周期的低激素期和高激素期采集的音节“pa”元音部分的语音样本被提取出来进行分析。初步分析应用傅里叶变换来检查基频和共振峰频率。小波分析用于在更微观行为层面研究频谱差异。关键发现表明,从高激素期采集的语音样本的基频小波系数比从低激素期采集的语音样本的基频小波系数具有更大的幅度。本研究为月经周期中影响音节元音部分的语音差异提供了证据。这一证据补充了关于表征音节辅音部分的语音时间特征的现有数据。小波分析为检查与激素变化相关的语音行为差异提供了一种新工具。