AI based emergency vehicle priority system

IF 2.2 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Rutwik Patel, Suraj Mange, Simran Mulik, N. Mehendale
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引用次数: 1

Abstract

Emergency vehicle priority (EVP) systems are the need of the hour to reduce the transit time of emergency vehicles in cities. As these cities are major hubs of economic activity they are one of the most densely populated cities in the world. Due to numerous such issues, ambulances are not able to reach patients and hospitals on time. In this paper, we propose a system that detects an ambulance accurately and helps set up a makeshift emergency lane on the routes to be taken by it. The system relies on a neural network-based siren classifier to detect the ambulance using audio processing. The overall accuracy of the siren classifier was 97.2 %. After the ambulance is detected this information is then passed onto a network of Internet of Things (IoT) devices that activate visual indicators on the routes to be taken by the ambulance. On activating the visual indicators the traffic on those roads can start making a temporary emergency lane. The system uses a GPS-based mobile app to get route information of the ambulance. The network of IoT devices consists of a host device and station/node devices in a chain-like connection, where all devices are communicating via local WiFi networks. The host receives information about the ambulance from the neural network and the mobile app. The host then sends this information down the chain to other node devices. Through our proposed system we hope that the transit time of ambulances is reduced and hence accident victims, heart attack patients, etc can get medical attention faster.
基于人工智能的应急车辆优先系统
紧急车辆优先(EVP)系统是减少城市紧急车辆运输时间的需要。由于这些城市是主要的经济活动中心,它们是世界上人口最稠密的城市之一。由于存在许多此类问题,救护车无法及时到达患者和医院。在本文中,我们提出了一个系统,该系统可以准确地检测救护车,并帮助在救护车行驶的路线上建立一条临时应急车道。该系统依赖于基于神经网络的警报器分类器,使用音频处理来检测救护车。警笛分类器的总体准确率为97.2%。在检测到救护车后,这些信息被传递到物联网(IoT)设备网络上,物联网设备激活救护车所走路线上的视觉指示器。激活视觉指示器后,这些道路上的交通可以开始设置临时应急车道。该系统使用基于GPS的移动应用程序来获取救护车的路线信息。物联网设备网络由链式连接的主机设备和站/节点设备组成,所有设备都通过本地WiFi网络进行通信。主机从神经网络和移动应用程序接收有关救护车的信息。然后,主机将该信息沿链路向下发送到其他节点设备。通过我们提出的系统,我们希望减少救护车的运送时间,从而使事故受害者、心脏病发作患者等能够更快地得到医疗救治。
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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来源期刊
CiteScore
5.10
自引率
0.00%
发文量
32
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