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首页> 外文期刊>International Journal of Knowledge-Based in Intelligent Engineering Systems >Genetic Programming for detecting rhythmic stress in spoken English
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Genetic Programming for detecting rhythmic stress in spoken English

机译:遗传程序检测英语口语节律

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Rhythmic stress detection is an important but difficult problem in speech recognition. This paper describes an approach to the automatic detection of rhythmic stress in New Zealand spoken English using a linear genetic programming system with speaker independent prosodic features and vowel quality features as terminals to classify each vowel segment as stressed or unstressed. In addition to the four standard arithmetic operators, this approach also uses other functions such as trigonometric and conditional functions in the function set to cope with the complexity of the task. The error rate on the training set is used as the fitness function. The approach is examined and compared to a decision tree approach and a support vector machine approach on a speech data set with 703 vowels segmented from 60 female adult utterances. The genetic programming approach achieved a maximum average accuracy of 92.6%. The results suggest that the genetic programming approach developed in this paper outperforms the decision tree approach and the support vector machine approach for stress detection on this data set in terms of the detection accuracy, the ability of handling redundant features, and the automatic feature selection capability.
机译:节律性压力检测是语音识别中一个重要但困难的问题。本文介绍了一种使用线性遗传编程系统自动检测新西兰口语中的节律性压力的方法,该系统具有独立于说话者的韵律特征和元音质量特征作为终端,以将每个元音片段分类为重音或不重音。除了四个标准算术运算符之外,此方法还使用其他函数(例如函数集中的三角函数和条件函数)来应对任务的复杂性。训练集上的错误率用作适应度函数。对这种方法进行了检查,并将其与语音数据集上的决策树方法和支持向量机方法进行比较,该语音数据集具有703个元音,这些元音从60个成年女性的语音中分割出来。遗传程序设计方法的最大平均准确度为92.6%。结果表明,在检测精度,处理冗余特征的能力以及自动特征选择能力方面,本文开发的遗传程序设计方法优于针对数据集进行压力检测的决策树方法和支持向量机方法。

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