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Classroom speech intelligibility prediction using Elman neural network

机译:Elman神经网络的课堂语音清晰度预测

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A study was conducted to develop a simple system for classrooms speech intelligibility prediction. In this study, several classrooms properties such as size, signal-to-noise ratio (SNR) and Speech Transmission Index (STI) were collected from different types of classrooms in Universiti Malaysia Perlis (UniMAP). A dataset was obtained from the measurement and was used to develop the system. To develop the system, several process were implemented which includes the statistical analysis, data cleaning and preprocessing, network development, training and classification. In this study, Elman network was selected to develop the system for its robustness in prediction application. The study has also experiments with the network dependency on normalization by comparing different types of normalization method. A simple system for classroom speech intelligibility prediction was developed and it was concluded that network performances are dependent to the normalization method.
机译:进行了一项研究,以开发一种用于教室语音清晰度预测的简单系统。在这项研究中,从马来西亚玻璃市大学(UniMAP)的不同类型的教室中收集了一些教室的属性,例如大小,信噪比(SNR)和语音传输指数(STI)。从测量中获得数据集,并将其用于开发系统。为了开发该系统,实施了几个过程,包括统计分析,数据清理和预处理,网络开发,培训和分类。在这项研究中,Elman网络因其在预测应用中的鲁棒性而被选择开发该系统。该研究还通过比较不同类型的归一化方法,对网络对归一化的依赖性进行了实验。开发了一个简单的课堂语音清晰度预测系统,并得出结论,网络性能取决于归一化方法。

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