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Non-linguistic vocal event detection using online random forest

机译:非语言声音事件检测使用在线随机森林

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Accurate detection of non-linguistic vocal events in social signals can have a great impact on the applicability of speech enabled interactive systems. In this paper, we investigate the use of random forest for vocal event detection. Random forest technique has been successfully employed in many areas such as object detection, face recognition, and audio event detection. This paper proposes to use online random forest technique for detecting laughter and filler and for analyzing the importance of various features for non-linguistic vocal event classification through permutation. The results show that according to the Area Under Curve measure the online random forest achieved 88.1% compared to 82.9% obtained by the baseline support vector machines for laughter classification and 86.8% to 83.6% for filler classification.
机译:精确地检测社会信号中的非语言声音事件可能对支持的互动系统的适用性产生很大影响。在本文中,我们调查了随机森林对声乐事件检测的使用。随机森林技术已经成功地在许多区域,如物体检测,人脸识别和音频事件检测等领域。本文建议使用在线随机林技术来检测笑声和填充物,并通过排列分析非语言声乐事件分类的各种特征的重要性。结果表明,根据曲线措施的区域,在线随机森林实现了88.1%,而基线支撑速度为82.9%的笑声分类,86.8%至83.6%用于填料分类。

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