利用符号错配揭露语音误用。

Marzyeh Ghassemi, Zeeshan Syed, Daryush D Mehta, Jarrad H Van Stan, Robert E Hillman, John V Guttag
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引用次数: 0

摘要

据估计,嗓音障碍影响着1400万处于工作年龄的美国人,在世界范围内影响的人数更多。我们提出了基于放置在脖子上的加速度计收集的长期动态数据的第一个大规模的声乐滥用研究。我们研究了一种无监督的数据挖掘方法来发现关于语音滥用的潜在信息。我们将来自22名受试者的253天数据中的信号分割成超过1亿个单个声门脉冲(声带闭合),将片段聚类成符号,并使用符号不匹配来揭示患者与匹配对照组之间以及患者治疗前后之间的差异。我们的研究结果显示患者和对照组之间,以及一些治疗前和治疗后的患者之间存在显著的行为差异。我们提出的方法为帮助诊断行为性语音障碍提供了客观基础,并且是对语音治疗影响的数据驱动理解的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Uncovering Voice Misuse Using Symbolic Mismatch.

Uncovering Voice Misuse Using Symbolic Mismatch.

Uncovering Voice Misuse Using Symbolic Mismatch.

Uncovering Voice Misuse Using Symbolic Mismatch.

Voice disorders affect an estimated 14 million working-aged Americans, and many more worldwide. We present the first large scale study of vocal misuse based on long-term ambulatory data collected by an accelerometer placed on the neck. We investigate an unsupervised data mining approach to uncovering latent information about voice misuse. We segment signals from over 253 days of data from 22 subjects into over a hundred million single glottal pulses (closures of the vocal folds), cluster segments into symbols, and use symbolic mismatch to uncover differences between patients and matched controls, and between patients pre- and post-treatment. Our results show significant behavioral differences between patients and controls, as well as between some pre- and post-treatment patients. Our proposed approach provides an objective basis for helping diagnose behavioral voice disorders, and is a first step towards a more data-driven understanding of the impact of voice therapy.

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