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Detecting Anomalous Noise Events on Low-Capacity Acoustic Sensor in Dynamic Road Traffic Noise Mapping

机译:在动态道路交通噪声映射中使用低容量声学传感器检测异常噪声事件

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One of the main aspects affecting the life of people living in urban and suburban areas is their continued exposure to high road traffic noise (RTN) levels, traditionally measured by specialists working on the field. Nowadays, the deployment of Wireless Acoustic Sensor Networks (WASN) has allowed to automate noise mapping in Smart Cities. In order to obtain a reliable picture of the RTN levels affecting citizens, those anomalous noise events (ANE) unrelated to road traffic should be removed from the noise map computation. For this purpose, an Anomalous Noise Event Detector (ANED) designed to differentiate in real-time between RTN and ANE should be developed to run on the low-cost acoustic sensors of the WASN. In this work, the viability of implementing the ANED algorithm to run on low-capacity (LowCap) ?? controller-based acoustic sensors developed within the DYNAMAP project is presented, after being designed and implemented for the high-capacity sensors. The algorithm is based on the comparison between RTN and ANE spectral differences using real-life acoustic data from both suburban and urban scenarios. The results show significant spectral differences between RTN and ANE classes in both environments, after being parametrized using Gammatone Cepstral Coefficients. However, further research should be conducted to determine the most discriminant subbands, which should be taken into account for the implementation of the ANED LowCap version.
机译:影响居住在城市和郊区的人们生活的主要方面之一是他们持续暴露于高水平的道路交通噪音(RTN)水平,传统上由现场专家进行测量。如今,无线声学传感器网络(WASN)的部署已使智慧城市中的噪声映射自动化。为了获得影响居民的RTN级别的可靠图像,应该从噪声图计算中删除与道路交通无关的那些异常噪声事件(ANE)。为此,应开发一种旨在实时区分RTN和ANE的异常噪声事件检测器(ANED),以在WASN的低成本声学传感器上运行。在这项工作中,实现ANED算法以在低容量(LowCap)上运行的可行性?在为大容量传感器设计和实现之后,介绍了DYNAMAP项目中开发的基于控制器的声学传感器。该算法基于RTN和ANE频谱差异之间的比较,其中使用了来自郊区和城市场景的真实声学数据进行比较。结果显示,在使用Gammatone倒谱系数进行参数设置后,在两种环境中RTN和ANE类之间的光谱差异都很大。但是,应该进行进一步的研究以确定最有区别的子带,在实施ANED LowCap版本时应考虑这些子带。

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