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Anomalous events removal for automated traffic noise maps generation

机译:异常事件消除,可自动生成交通噪声图

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Road Traffic Noise (RTN) is one of the biggest pollutants in modern cities, which is known to affect public health to be the direct cause of many illnesses for their inhabitants. Until recently, RTN maps have been generated using representative static measurements collected by experts, after manually discarding all non-traffic related noise events, or Anomalous Noise Events (ANEs). However, the automation of noise measurements using Wireless Acoustic Sensor Networks (WASNs) is allowing the development of dynamic maps, which require the detection of non-traffic noise sources in real-time in order to provide accurate noise level measurements. In this work, the manual an automatic removal of ANEs are compared. The latter is based on two versions of the Anomalous Noise Event Detector (ANED) designed to detect ANEs within a WASN in real-time as a two-class classifier. The experiments on 4 h and 44 min of real-life audio data show similar error rates among all the considered annotation methods. However, the detailed analysis of the experiments reveal, on the one hand, inconsistent manual annotations in certain non-ANE labelling situations, where non-coincident expert-based decisions are observed; and, on the other hand, the decrease of the overall accuracy of the ANED-based approaches due to the large number of false alarms in the case of RTN class. Thus, although the results demonstrate the viability of the automated removal of ANEs, further research should be conducted to keep improving the automation of ANEs annotation. (C) 2019 Elsevier Ltd. All rights reserved.
机译:道路交通噪音(RTN)是现代城市中最大的污染物之一,众所周知,影响公众健康是居民许多疾病的直接原因。直到最近,在手动丢弃所有与交通无关的噪声事件或异常噪声事件(ANE)之后,使用专家收集的代表性静态测量值生成了RTN映射。但是,使用无线声传感器网络(WASN)进行噪声测量的自动化允许开发动态地图,该动态地图需要实时检测非交通噪声源,以便提供准确的噪声水平测量。在这项工作中,比较了自动清除ANE的手册。后者基于两个版本的异常噪声事件检测器(ANED),旨在将WASN中的ANE实时检测为两类分类器。在4小时和44分钟的真实音频数据上进行的实验显示,在所有考虑的注释方法中,错误率均相似。然而,对实验的详细分析一方面揭示了在某些非ANE标记情况下的手动注释不一致,在这种情况下,观察到基于专家的不一致决策;另一方面,由于在RTN类情况下的大量误报,基于ANED的方法的整体准确性下降。因此,尽管结果证明了自动删除ANE的可行性,但应进行进一步的研究以不断提高ANE注释的自动化程度。 (C)2019 Elsevier Ltd.保留所有权利。

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