Phonetic and anthropometric conditioning of MSA-KST cognitive impairment characterization system

A. Ivanov, S. Jalalvand, R. Gretter, D. Falavigna
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引用次数: 3

Abstract

We explore the impact of speech- and speaker-specific modeling onto the Modulation Spectrum Analysis - Kolmogorov-Smirnov feature Testing (MSA-KST) characterization method in the task of automated prediction of the cognitive impairment diagnosis, namely dysphasia and pervasive development disorder. Phoneme-synchronous capturing of speech dynamics is a reasonable choice for a segmental speech characterization system as it allows comparing speech dynamics in the similar phonetic contexts. Speaker-specific modeling aims at reducing the “within-the-class” variability of the characterized speech or speaker population by removing the effect of speaker properties that should have no relation to the characterization. Specifically the vocal tract length of a speaker has nothing to do with the diagnosis attribution and, thus, the feature set shall be normalized accordingly. The resulting system compares favorably to the baseline system of the Interspeech'2013 Computational Paralinguistics Challenge.
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MSA-KST认知障碍表征系统的语音和人体测量调节
我们探讨了语音和说话人特定建模对调制频谱分析- Kolmogorov-Smirnov特征测试(MSA-KST)表征方法在自动预测认知障碍诊断任务中的影响,即语言障碍和广泛性发育障碍。语音动态的音素同步捕获是分段语音表征系统的合理选择,因为它允许在相似的语音上下文中比较语音动态。特定于说话人的建模旨在通过消除与特征无关的说话人属性的影响,减少特征语音或说话人群体的“类内”可变性。具体来说,说话人的声道长度与诊断归因无关,因此需要对特征集进行归一化处理。由此产生的系统与Interspeech 2013年计算副语言学挑战赛的基准系统相比具有优势。
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