音频事件异常检测的拒绝分类器集成

Donatello Conte, P. Foggia, G. Percannella, Alessia Saggese, M. Vento
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引用次数: 41

摘要

音频分析系统在科学界受到越来越多的关注,它不仅是通过音频轨道的解释来自动检测异常事件的独立系统,而且还与视频分析工具结合在一起,用于强制执行异常检测的证据。在本文中,我们提出了一组异常音频事件的自动识别器,该识别器通过从安装在监视区域的麦克风获得的信号中提取合适的特征,并使用两个以不同时间分辨率运行的分类器对它们进行分类。提出的系统的一个原始方面是估计每个分类器的每个响应的可靠性。通过这种方式,每个分类器都能够拒绝总体可靠性低于阈值的样本。这种方法允许我们的系统只结合可靠的决策,从而提高方法的整体性能。该系统已经在从现实世界场景中获取的大量样本数据集上进行了测试,除了背景声音外,还包括枪声、尖叫声和玻璃破碎声。获得的初步结果鼓励在这一方向上进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ensemble of Rejecting Classifiers for Anomaly Detection of Audio Events
Audio analytic systems are receiving an increasing interest in the scientific community, not only as stand alone systems for the automatic detection of abnormal events by the interpretation of the audio track, but also in conjunction with video analytics tools for enforcing the evidence of anomaly detection. In this paper we present an automatic recognizer of a set of abnormal audio events that works by extracting suitable features from the signals obtained by microphones installed into a surveilled area, and by classifying them using two classifiers that operate at different time resolutions. An original aspect of the proposed system is the estimation of the reliability of each response of the individual classifiers. In this way, each classifier is able to reject the samples having an overall reliability below a threshold. This approach allows our system to combine only reliable decisions, so increasing the overall performance of the method. The system has been tested on a large dataset of samples acquired from real world scenarios, the audio classes of interests are represented by gunshot, scream and glass breaking in addition to the background sounds. The preliminary results obtained encourage further research in this direction.
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