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Feature based classification for classroom speech intelligibility prediction

机译:基于特征的课堂语音清晰度预测分类

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Education is one of the most important aspects in human life. Nowadays, a quality education not only rely on the teaching itself, but also the environment. One of the important aspects in providing an educative environment is the acoustic quality of the teaching facilities. In this paper, a signal processing based classroom speech intelligibility prediction will be discussed. There are four main stages involved in this research, which were measurement, preprocessing, feature extraction and classification. Two types of audio features were used in this research and the classification results were compared. It was concluded that Elman classifiers trained with zero-crossing rate features tend to produce better classification accuracy compared to the spectral roll off.
机译:教育是人类生活中最重要的方面之一。如今,高质量的教育不仅依赖于教学本身,还依赖于环境。提供教育环境的重要方面之一是教学设施的声学质量。在本文中,将讨论基于信号处理的课堂语音清晰度预测。这项研究涉及四个主要阶段,分别是测量,预处理,特征提取和分类。本研究使用了两种类型的音频特征,并对分类结果进行了比较。结论是,与频谱滚降相比,经过过零率特征训练的Elman分类器倾向于产生更好的分类精度。

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