Identifying parking spaces & detecting occupancy using vision-based IoT devices

Xiao Ling, Jie Sheng, O. Baiocchi, Xing Liu, Matthew E. Tolentino
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引用次数: 36

Abstract

The increasing number of vehicles in high density, urban areas is leading to significant parking space shortages. While systems have been developed to enable visibility into parking space vacancies for drivers, most rely on costly, dedicated sensor devices that require high installation costs. The proliferation of inexpensive Internet of Things (IoT) devices enables the use of compute platforms with integrated cameras that could be used to monitor parking space occupancy. However, even with camera-captured images, manual specification of parking space locations is required before such devices can be used by drivers after device installation. In this paper, we leverage machine learning techniques to develop a method to dynamically identify parking space topologies based on parked vehicle positions. More specifically, we designed and evaluated an occupation detection model to identify vacant parking spaces. We built a prototype implementation of the whole system using a Raspberry Pi and evaluated it on a real-world urban street near the University of Washington campus. The results show that our clustering-based learning technique coupled with our occupation detection pipeline is able to correctly identify parking spaces and determine occupancy without manual specication of parking space locations with an accuracy of 91%. By dynamically aggregating identied parking spaces from multiple IoT devices using Amazon Cloud Services, we demonstrated how a complete, city-wide parking management system can be quickly deployed at low cost.
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使用基于视觉的物联网设备识别停车位和检测占用情况
在高密度的城市地区,越来越多的车辆导致了严重的停车位短缺。虽然已经开发出了能够让司机看到停车位空缺的系统,但大多数系统都依赖于昂贵的专用传感器设备,需要高昂的安装成本。廉价物联网(IoT)设备的普及使得集成摄像头的计算平台能够用于监控停车位占用情况。然而,即使有摄像头拍摄的图像,在安装设备后,司机可以使用这些设备之前,也需要手动指定停车位的位置。在本文中,我们利用机器学习技术开发了一种基于停放车辆位置动态识别停车位拓扑的方法。更具体地说,我们设计并评估了一个占用检测模型来识别空置的停车位。我们使用树莓派构建了整个系统的原型实现,并在华盛顿大学校园附近的现实城市街道上对其进行了评估。结果表明,我们的基于聚类的学习技术与我们的占用检测管道相结合,能够在不需要手动指定停车位位置的情况下正确识别停车位并确定占用率,准确率达到91%。通过使用亚马逊云服务动态聚合来自多个物联网设备的已识别停车位,我们展示了如何以低成本快速部署完整的全市停车管理系统。
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