语言障碍和典型语音扩展样本中停顿的算法估计。

Jordan R Green, David R Beukelman, Laura J Ball
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引用次数: 0

摘要

本研究的目的是评估一种算法的有效性和性能,该算法旨在从连接的语音样本中自动提取暂停和语音时间信息。从10名肌萎缩性侧索硬化症(ALS)患者和10名对照演讲者中获得语言样本。暂停是通过人工和算法从语音段落的数字记录背诵中识别出来的,这是为了提高暂停边界检测的精度而开发的。手工方法和算法方法的结果没有显著差异。对三种不同暂停检测参数的逐步分析表明,暂停时间百分比的估计高度依赖于指定的最小可接受暂停持续时间和最小信号幅度的值。与先前关于言语困难的报告一致,ALS患者的停顿时间明显长于对照组,变化也更大。这些结果表明,该算法为从最优结构的语音样本中提取暂停和语音时间信息提供了一种有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithmic Estimation of Pauses in Extended Speech Samples of Dysarthric and Typical Speech.

The aim of this study was to evaluate the validity and performance of an algorithm designed to automatically extract pauses and speech timing information from connected speech samples. Speech samples were obtained from 10 people with amyotrophic lateral sclerosis (ALS) and 10 control speakers. Pauses were identified manually and algorithmically from digitally recorded recitations of a speech passage that was developed to improve the precision of pause boundary detection.The manual and algorithmic methods did not yield significantly different results. A stepwise analysis of three different pause detection parameters revealed that estimates of percent pause time were highly dependent on the values specified for the minimum acceptable pause duration and the minimum signal amplitude. Consistent with previous reports of dysarthric speech, pauses were significantly longer and more variable in speakers with ALS than in the control speakers. These results suggest that the algorithm provided an efficient and valid method for extracting pause and speech timing information from the optimally structured speech sample.

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