Mobile outdoor parking space detection application

Chin-Kit Ng, S. Cheong, Erfan Hajimohammadhosseinmemar, Wen-Jiun Yap
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引用次数: 9

Abstract

Finding a vacant parking space in outdoor parking lots is a daily concern of most vehicle drivers during rush hours, especially in the urban context. In this paper, an outdoor parking space vacancy detection system is proposed, using mobile devices to improve parking space searching experience for vehicle drivers by providing them with the location and occupancy information of parking spaces. The system uses state-of-the-art image recognition algorithm, namely Convolutional Neural Network with a Raspberry Pi to identify vacant parking spaces from a parking lot image retrieved in real time via an IP camera. A university parking lot has been chosen as the test bed to deploy the proposed system for real time parking space vacancy detection. An Android smartphone application called Driver App is developed to enable ubiquitous visualization of real time outdoor parking spaces occupancy information for vehicle drivers. Evaluation outcomes based on the responses to System Usability Scale (SUS) questionnaire revealed high usability of the Driver App as a tool that provides smart parking service to assist vehicle drivers in searching for a vacant parking space.
移动户外停车位检测应用
在交通高峰时段,尤其是在城市环境中,在室外停车场找到一个空闲的停车位是大多数车辆司机每天关心的问题。本文提出了一种室外车位空缺检测系统,利用移动设备为车辆驾驶员提供车位位置和占用信息,提高车辆的车位搜索体验。该系统使用最先进的图像识别算法,即带有树莓派的卷积神经网络,通过IP摄像机实时检索停车场图像,识别出空置的停车位。选择一个大学停车场作为测试平台,部署该系统用于实时车位空置检测。开发了一款名为“Driver App”的Android智能手机应用程序,为车辆驾驶员提供无处不在的实时户外停车位占用信息。基于系统可用性量表(SUS)问卷的评估结果显示,驾驶员应用程序作为提供智能停车服务的工具,帮助车辆驾驶员寻找空置的停车位,具有很高的可用性。
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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