Provincial Ministry of Education Key Laboratory of Cognitive Radio and Signal Processing, Guilin University of Electronic Technology, Guilin 541004, China.
Guangxi Key Laboratory of Wireless Broadband Communication and Signal Processing, Guilin University of Electronic Technology, Guilin 541004, China.
Sensors (Basel). 2020 Apr 8;20(7):2093. doi: 10.3390/s20072093.
Nowadays, urban noise emerges as a distinct threat to people's physiological and psychological health. Previous works mainly focus on the measurement and mapping of the noise by using Wireless Acoustic Sensor Networks (WASNs) and further propose some methods that can effectively reduce the noise pollution in urban environments. In addition, the research on the combination of environmental noise measurement and acoustic events recognition are rapidly progressing. In a real-life application, there still exists the challenges on the hardware design with enough computational capacity, the reduction of data amount with a reasonable method, the acoustic recognition with CNNs, and the deployment for the long-term outdoor monitoring. In this paper, we develop a novel system that utilizes the WASNs to monitor the urban noise and recognize acoustic events with a high performance. Specifically, the proposed system mainly includes the following three stages: (1) We used multiple sensor nodes that are equipped with various hardware devices and performed with assorted signal processing methods to capture noise levels and audio data; (2) the Convolutional Neural Networks (CNNs) take such captured data as inputs and classify them into different labels such as car horn, shout, crash, explosion; (3) we design a monitoring platform to visualize noise maps, acoustic event information, and noise statistics. Most importantly, we consider how to design effective sensor nodes in terms of cost, data transmission, and outdoor deployment. Experimental results demonstrate that the proposed system can measure the urban noise and recognize acoustic events with a high performance in real-life scenarios.
如今,城市噪声已成为人们生理和心理健康的明显威胁。以前的工作主要集中在使用无线声传感器网络(WASN)测量和绘制噪声,并进一步提出了一些可以有效降低城市环境噪声污染的方法。此外,环境噪声测量与声学事件识别的结合研究正在迅速发展。在实际应用中,仍然存在硬件设计具有足够计算能力、使用合理方法减少数据量、使用 CNN 进行声学识别以及进行长期户外监测的挑战。在本文中,我们开发了一种利用 WASN 监测城市噪声并实现高性能声学事件识别的新系统。具体来说,所提出的系统主要包括以下三个阶段:(1)我们使用多个传感器节点,这些节点配备了各种硬件设备,并采用了各种信号处理方法来捕捉噪声水平和音频数据;(2)卷积神经网络(CNNs)将这些捕获的数据作为输入,并将其分类为不同的标签,如汽车喇叭、呼喊、碰撞、爆炸;(3)我们设计了一个监测平台,以可视化噪声图、声学事件信息和噪声统计数据。最重要的是,我们考虑了如何在成本、数据传输和户外部署方面设计有效的传感器节点。实验结果表明,所提出的系统可以在实际场景中测量城市噪声并实现高性能的声学事件识别。