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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Random forest classification based acoustic event detection utilizing contextual-information and bottleneck features
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Random forest classification based acoustic event detection utilizing contextual-information and bottleneck features

机译:基于随机森林分类的声学事件检测利用上下文信息和瓶颈特征

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摘要

The variety of event categories and event boundary information have resulted in limited success for acoustic event detection systems. To deal with this, we propose to utilize the long contextual information, low-dimensional discriminant global bottleneck features and category-specific bottleneck features. By concatenating several adjacent frames together, the use of contextual information makes it easier to cope with acoustic signals with long duration. Global and category-specific bottleneck features can extract the prior knowledge of the event category and boundary, which is ideally matched by the task of an event detection system. Evaluations on the UPC-TALP and ITC-IRST databases of highly variable acoustic events demonstrate the effectiveness of the proposed approaches by achieving a 5.30% and 4.44% absolute error rate improvement respectively compared to the state of art technique. (C) 2018 Elsevier Ltd. All rights reserved.
机译:各种事件类别和事件边界信息导致声学事件检测系统成功有限。 要处理这一点,我们建议利用长的上下文信息,低维判别全局瓶颈特征和特定于特定的瓶颈特征。 通过将若干相邻帧连接在一起,使用上下文信息使得更容易应对具有长时间的声信号。 全局和类别特定的瓶颈功能可以提取事件类别和边界的先前知识,其理想地匹配事件检测系统的任务。 高度可变声学事件的UPC-TALP和ITC-IRST数据库的评估展示了所提出的方法通过分别实现5.30%和4.44%的绝对误差率改进来实现拟议方法的有效性。 (c)2018年elestvier有限公司保留所有权利。

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