Using convolutional neural networks for acoustic-based emergency vehicle detection

A. Lisov, A. Kulganatov, S.A. Panishev
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引用次数: 1

Abstract

Background: A siren is a special signal given by emergency vehicles such as fire trucks, police cars and ambulances to warn drivers or pedestrians on the road. However, drivers sometimes may not hear the siren due to the sound insulation of a modern car, the noise of city traffic, or their own inattention. This problem can lead to a delay in the provision of emergency services or even to traffic accidents. Aim: develop an acoustic method for detecting the presence of emergency vehicles on the road through the use of convolutional neural networks. Materials and Methods: The algorithm of work is based on the conversion of sound from the external environment into its spectrogram, for analysis by a convolutional neural network. An open dataset (Emergency Vehicle Siren Sounds) from sources available on Internet sites such as Google and Youtube, saved in the .wav audio format, was used as a dataset for siren sounds and city traffic. The code was developed on the Google.Colab platform using cloud storage. Results: The conducted experiments showed that the proposed method and model of the neural network make it possible to achieve an average efficiency of determining the type of sound with an accuracy of 93.3 % and a speed recognition of 0.00045 % of a second. Conclusion: The use of the developed technology for recognizing siren sounds in city noize will improve traffic safety and increase the chances of preventing a dangerous situation. Also, this system can be an additional assistant for hearing-impaired people while driving and everyday life for timely notification of the presence of emergency services nearby.
利用卷积神经网络进行基于声学的应急车辆检测
背景:警笛是消防车、警车和救护车等紧急车辆发出的一种特殊信号,用于警告道路上的司机或行人。然而,由于现代汽车的隔音,城市交通的噪音,或者他们自己的注意力不集中,司机有时可能听不到警报器。这一问题可能导致提供紧急服务的延误,甚至导致交通事故。目的:开发一种声学方法,通过使用卷积神经网络来检测道路上是否存在紧急车辆。材料和方法:功的算法是基于将外部环境的声音转换为其频谱图,并通过卷积神经网络进行分析。一个开放的数据集(紧急车辆警报器声音),来自于谷歌和Youtube等互联网站点,以。wav音频格式保存,被用作警报器声音和城市交通的数据集。代码是在Google上开发的。Colab平台使用云存储。结果:实验表明,所提出的神经网络方法和模型可以实现声音类型识别的平均效率,准确率为93.3%,识别速度为0.00045%。结论:在城市噪声中使用已开发的识别警笛声音的技术将提高交通安全,增加预防危险情况的机会。此外,该系统还可以成为听力受损人士在驾驶和日常生活中及时通知附近有紧急服务的额外助手。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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