语言障碍中的模式搜索

Juraj Pálfy, Jiri Pospíchal
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引用次数: 8

摘要

时间序列模式识别常用于数据挖掘和生物信息学。语音只能被视为一种不同类型的信号,并作为时间序列进行处理。口吃的言语中有很多事件也被称为不流畅,典型的是重复。本文介绍了一种计算复杂重复数的新方法。经典的口吃言语分析方法在很短的时间间隔内分析不流畅,这足以识别简单的音素重复。然而,音节或单词的重复问题通常被忽略,因为传统的分析方法对较长间隔的计算要求很高。我们的方法采用了数据挖掘和生物信息学的方法,结合语音信号的有效表示,简化了语音处理,足以分析更长的间隔。结果表明了该方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pattern search in dysfluent speech
Pattern recognition in time series is often used in data mining and in bioinformatics. Speech can be considered only as a different type of signal and processed as a time series. Stuttered speech is rich in events also known as dysfluencies, typically repetitions. This paper describes a new method for enumerating complex repetitions. Classical approaches to stuttered speech analyzed dysfluencies in very short intervals, which were sufficient for recognizing simple repetitions of phonemes. However, the problem of repetitions of syllables or words was typically ignored due to high computational demands of classical methods for analysis of longer intervals. Our approach uses a method adopted from data mining and bioinformatics, together with efficient representation of speech signal, which simplifies processing of speech enough to enable analysis of longer intervals. Results show applicability of the proposed method.
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