Vehicular networking and computer vision-based distance estimation for VANET application using Raspberry Pi 3

Mulia Pratama, G. Gruosso, W. B. Santoso, Achmad Praptijanto
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引用次数: 1

Abstract

This research was implementing vehicle networking using WIFI connection and computer vision to measure the distance of vehicles in front of a driver. In particular, this works aimed to improve a safe driving environment thus supporting the current technology concept being developed for inter-vehicular networking, VANET, especially in its safety application such as Overtaking Assistance System. Moreover, it can wirelessly share useful visual information such as hazard area of a road accident. In accordance with Vehicle-to-Vehicle (V2V) concept, a vehicle required to be able to conduct networking via a wireless connection. Useful data and video were the objects to be sent over the network established. The distance of a vehicle to other vehicles towards it is measured and sent via WIFI together with a video stream of the scenery experienced by the front vehicle. Haar Cascade Classifier is chosen to perform the detection. For distance estimation, at least three methods have been compared in this research and found evidence that, for measuring 5 meters, the iterative methods shows 5.80. This method performs well up to 15 meters. For measuring 20 meters, P3P method shows a better result with only 0.71 meters to the ground truth. To provide a physical implementation for both the detection and distance estimation mechanism, those methods were applied in a compact small-sized vehicle-friendly computer device the Raspberry Pi. The performance of the built system then analyzed in terms of streaming latency and accuracy of distance estimation and shows a good result in measuring distance up to 20 meters.
使用Raspberry Pi 3的VANET应用的车辆联网和基于计算机视觉的距离估计
这项研究是利用WIFI连接和计算机视觉来实现车辆联网,以测量驾驶员前方车辆的距离。特别是,这项工作旨在改善安全的驾驶环境,从而支持目前正在开发的车联网技术概念,VANET,特别是在其安全应用方面,如超车辅助系统。此外,它还可以无线共享交通事故危险区域等有用的视觉信息。根据车对车(V2V)概念,车辆需要能够通过无线连接进行网络连接。有用的数据和视频是通过建立的网络发送的对象。一辆车与其他车辆之间的距离是通过WIFI测量的,并通过前车所经历的风景视频流发送。选择Haar级联分类器进行检测。对于距离估计,本研究至少比较了三种方法,并发现证据表明,对于测量5米,迭代方法显示5.80。这种方法在15米深的地方效果很好。对于20米的测量,P3P法效果较好,与地面真值仅相差0.71米。为了提供检测和距离估计机制的物理实现,这些方法应用于紧凑的小型车辆友好型计算机设备树莓派。然后从流延迟和距离估计精度方面分析了所建系统的性能,在测量20米以内的距离时显示出良好的效果。
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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CiteScore
0.70
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发文量
10
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