论文标题

一个聪明,高效且可靠的停车监视系统,在物联网设备上具有边缘人工智能

A Smart, Efficient, and Reliable Parking Surveillance System with Edge Artificial Intelligence on IoT Devices

论文作者

Ke, Ruimin, Zhuang, Yifan, Pu, Ziyuan, Wang, Yinhai

论文摘要

多年来,云计算一直是主流计算服务。最近,随着城市化的快速发展,大规模的视频监视数据以空前的速度生成。处理大数据的传统解决方案将需要大量的计算和存储资源。随着物联网(IoT),人工智能和通信技术的进步,Edge Computing通过部分或完全处理监视系统的边缘来解决问题的新解决方案。在这项研究中,我们研究了将边缘计算用于智能停车监视任务的可行性,这是智能城市的关键组成部分。系统处理管道经过精心设计,考虑了灵活性,在线监视,数据传输,检测准确性和系统可靠性。它通过实现增强的单镜头多伯克斯检测器(SSD)来实现边缘的人工智能。在瞄准最佳系统效率和准确性的边缘和服务器上都开发了更多算法。在Angle Lake停车场进行了三个月的彻底现场测试。实验结果有望在具有高效率和可靠性的现实情况下,最终检测方法在现实情况下达到超过95%的精度。拟议的智能停车监视系统可能是智能运输系统将来应用的坚实基础。

Cloud computing has been a main-stream computing service for years. Recently, with the rapid development in urbanization, massive video surveillance data are produced at an unprecedented speed. A traditional solution to deal with the big data would require a large amount of computing and storage resources. With the advances in Internet of things (IoT), artificial intelligence, and communication technologies, edge computing offers a new solution to the problem by processing the data partially or wholly on the edge of a surveillance system. In this study, we investigate the feasibility of using edge computing for smart parking surveillance tasks, which is a key component of Smart City. The system processing pipeline is carefully designed with the consideration of flexibility, online surveillance, data transmission, detection accuracy, and system reliability. It enables artificial intelligence at the edge by implementing an enhanced single shot multibox detector (SSD). A few more algorithms are developed on both the edge and the server targeting optimal system efficiency and accuracy. Thorough field tests were conducted in the Angle Lake parking garage for three months. The experimental results are promising that the final detection method achieves over 95% accuracy in real-world scenarios with high efficiency and reliability. The proposed smart parking surveillance system can be a solid foundation for future applications of intelligent transportation systems.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源