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Detecting Filled Pauses and Lengthenings in Russian Spontaneous Speech Using SVM

机译:使用SVM检测俄语自发性语音中的填充暂停和加长

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Spontaneous speech differs from any other type of speech in many ways. And the presence of speech disfluencies is its prominent characteristic. These phenomena are important feature in human-human communication and at the same time a challenging obstacle for the speech processing tasks. This paper reports the experiment results on automatic detection of filled pauses and sound lengthenings basing on the automatically extracted acoustic features. We have performed machine learning experiments using support vector machine (SVM) classifier on the mixed and quality diverse corpus of Russian spontaneous speech. We applied Gaussian filtering and morphological opening to post-process the probability estimates from an SVM classifier. As the result we achieved Fl-score of 0.54, with precision and recall being 0.55 and 0.53 respectively.
机译:自发性语音在许多方面与任何其他类型的语音不同。语音不便现象的存在是其突出的特征。这些现象是人与人之间交流的重要特征,同时也是语音处理任务的挑战性障碍。本文报告了基于自动提取的声学特征自动检测填充的暂停和声音加长的实验结果。我们已经使用支持向量机(SVM)分类器对俄罗斯自发语音的混合且质量多样的语料库进行了机器学习实验。我们应用高斯滤波和形态学开放对SVM分类器的概率估计进行后处理。结果,我们获得的F1分数为0.54,精度和召回率分别为0.55和0.53。

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