Howell P, Sackin S, Glenn K
Department of Psychology, University College London, England.
J Speech Lang Hear Res. 1997 Oct;40(5):1085-96. doi: 10.1044/jslhr.4005.1085.
This program of work is intended to develop automatic recognition procedures to locate and assess stuttered dysfluencies. This and the preceding article focus on developing and testing recognizers for repetitions and prolongations in stuttered speech. The automatic recognizers classify the speech in two stages: In the first the speech is segmented and in the second the segments are categorized. The units segmented are words. The current article describes results for an automatic recognizer intended to classify words as fluent or containing a repetition or prolongation in a text read by children who stutter that contained the three types of words alone. Word segmentations are supplied and the classifier is an artificial neural network (ANN). Classification performance was assessed on material that was not used for training. Correct performance occurred when the ANN placed a word into the same category as the human judge whose material was used to train the ANNs. The best ANN correctly classified 95% of fluent, and 78% of dysfluent words in the test material.
这项工作计划旨在开发自动识别程序,以定位和评估口吃性言语不流畅。本文以及上一篇文章着重于开发和测试用于识别口吃言语中重复和延长现象的识别器。自动识别器分两个阶段对语音进行分类:第一阶段对语音进行分割,第二阶段对片段进行分类。分割的单元是单词。本文描述了一个自动识别器的结果,该识别器旨在将口吃儿童朗读文本中的单词分类为流畅或包含重复或延长,该文本仅包含这三种类型的单词。提供了单词分割,分类器是一个人工神经网络(ANN)。在未用于训练的材料上评估分类性能。当人工神经网络将一个单词归入与用于训练人工神经网络的人类评判员相同的类别时,即为正确的表现。最佳的人工神经网络在测试材料中正确分类了95%的流畅单词和78%的不流畅单词。