AbstractIn recent years, computational paralinguistics has emerged as a new topic within speech technology. It '/> A feature selection-based speaker clustering method for paralinguistic tasks
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A feature selection-based speaker clustering method for paralinguistic tasks

机译:基于特征选择的说话人聚类说话人聚类方法

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AbstractIn recent years, computational paralinguistics has emerged as a new topic within speech technology. It concerns extracting non-linguistic information from speech (such as emotions, the level of conflict, whether the speaker is drunk). It was shown recently that many methods applied here can be assisted by speaker clustering; for example, the features extracted from the utterances could be normalized speaker-wise instead of using a global method. In this paper, we propose a speaker clustering algorithm based on standard clustering approaches like K-means and feature selection. By applying this speaker clustering technique in two paralinguistic tasks, we were able to significantly improve the accuracy scores of several machine learning methods, and we also obtained an insight into what features could be efficiently used to separate the different speakers.
机译: Abstract 近年来,计算语言学已经成为语音技术中的一个新主题。它涉及从语音中提取非语言信息(例如情绪,冲突程度,说话者是否醉酒)。最近显示,说话者聚类可以辅助此处应用的许多方法。例如,可以从说话者角度对从发声中提取的特征进行归一化,而不是使用全局方法。在本文中,我们提出了一种基于标准聚类方法(例如K均值和特征选择)的说话人聚类算法。通过将此说话人聚类技术应用于两个副语言任务,我们可以显着提高几种机器学习方法的准确性得分,并且还洞悉了哪些功能可以有效地用于区分不同的说话人。 < /摘要>

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