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Detection of Hazardous Road Events From Audio Streams: An Ensemble Outlier Detection Approach

机译:从音频流检测有害道路事件:集合异常检测方法

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Change detection in audio data streams has become an efficient way for online notification of events. An interesting application is audio surveillance, including road traffic monitoring and online car crash alarms. However, in the particular case of crash alarms, most of the collected sounds are background noises, with various sub-classes, such as talking pedestrians, engine sounds, horn blowing, etc., whereas those corresponding to the event of interest are much less abundant. Therefore, it is difficult to apply classical tools of classification or clustering to detect crash sounds as a particular class or as outliers. To tackle this problem, we propose an ensemble classifier based on one-class SVM in order to separate outliers from normal data first, and deep neural networks to classify event-related data. Finally the results of both outlier detection and classification outputs are aggregated in such a way that outliers are considered as a novel class, a priori unknown by the DNN classifier. The application of this method on an audio traffic monitoring database confirms its ability to detect, (a) non-events (background noise), nonhazardous and hazardous event, and (b) non-accidents and accidents, from a stream of audio data.
机译:音频数据流中的更改检测已成为在线通知事件的有效方法。一个有趣的应用是音频监控,包括道路交通监控和在线车祸报警。然而,在特定的崩溃警报的情况下,大多数收集的声音都是背景噪音,具有各种子类,例如谈话行人,发动机声音,喇叭吹等,而与感兴趣的事件相对应的那些丰富。因此,难以应用分类或聚类的经典工具,以检测崩溃声音作为特定类或异常值。为了解决这个问题,我们提出了一个基于单级SVM的集合分类器,以便将异常值分开来自普通数据的第一,以及深度神经网络来分类与事件相关的数据。最后,总体检测和分类输出的结果以这样的方式聚合,使得异常值被视为新颖类,DNN分类器的先验结果。该方法在音频流量监测数据库上的应用确认其能够从音频数据流中检测(a)非事件(背景噪声),非事件和危险事件,(b)非事故和事故。

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