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One-Class SVM Based Approach for Detecting Anomalous Audio Events

机译:基于一类SVM的异常音频事件检测方法

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The last generation automated security and surveillance systems call for new and advanced capabilities to automatically and reliably recognize suspicious events or activities in the monitored environments on the base of a real-time and combined analysis of different multimedia streams. In this paper we focus our attention on the analysis of audio signal and present a method based on one-class Support Vector Machine (1-SVM) classifiers. Such an approach is able to support the recognition of different kinds of burst-like anomalies (i.e. gun-shots, broken glasses and screams), on the base of their time and frequency domain characterization. Several experiments have been carried out, showing the potentiality of our method with respect to other approaches proposed in the recent literature.
机译:上一代的自动化安全和监视系统需要新的高级功能,以便在对不同多媒体流进行实时和组合分析的基础上,自动可靠地识别受监视环境中的可疑事件或活动。在本文中,我们将注意力集中在音频信号的分析上,并提出一种基于一类支持向量机(1-SVM)分类器的方法。这种方法能够根据其时域和频域特征来支持识别不同类型的突发性异常(即枪声,碎玻璃和尖叫声)。已经进行了一些实验,表明了我们的方法相对于最近文献中提出的其他方法的潜力。

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