Road Weather Condition Estimation Using Fixed and Mobile Based Cameras.

Koray Ozcan, Anuj Sharma, Skylar Knickerbocker, Jennifer Merickel, Neal Hawkins, Matthew Rizzo
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引用次数: 8

Abstract

Automated interpretation and understanding of the driving environment using image processing is a challenging task, as most current vision-based systems are not designed to work in dynamically-changing and naturalistic real-world settings. For instance, road weather condition classification using a camera is a challenge due to high variance in weather, road layout, and illumination conditions. Most transportation agencies, within the U.S., have deployed some cameras for operational awareness. Given that weather related crashes constitute 22% of all vehicle crashes and 16% of crash fatalities, this study proposes using these same cameras as a source for estimating roadway surface condition. The developed model is focused on three road surface conditions resulting from weather including: Clear (clear/dry), Rainy-Wet (rainy/slushy/wet), and Snow (snow-covered/partially snow-covered). The camera sources evaluated are both fixed Closed-circuit Television (CCTV) and mobile (snow plow dash-cam). The results are promising; with an achieved 98.57% and 77.32% road weather classification accuracy for CCTV and mobile cameras, respectively. Proposed classification method is suitable for autonomous selection of snow plow routes and verification of extreme road conditions on roadways.

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使用固定和移动摄像头估算道路天气状况。
使用图像处理对驾驶环境进行自动解释和理解是一项具有挑战性的任务,因为目前大多数基于视觉的系统都不能在动态变化和自然的现实环境中工作。例如,由于天气、道路布局和照明条件的高度变化,使用相机进行道路天气状况分类是一项挑战。在美国,大多数交通运输机构都部署了一些摄像头,以提高操作意识。考虑到与天气有关的事故占所有车辆事故的22%,占事故死亡人数的16%,本研究建议使用这些相同的摄像头作为估计道路表面状况的来源。所开发的模型主要关注由天气导致的三种路面状况,包括:Clear(晴朗/干燥)、rain - wet(下雨/泥泞/潮湿)和Snow(积雪/部分积雪)。评估的摄像机来源包括固定闭路电视(CCTV)和移动(雪犁仪表盘摄像头)。结果是有希望的;闭路电视和移动摄像机的道路天气分类准确率分别达到98.57%和77.32%。所提出的分类方法适用于雪犁路线的自主选择和道路极端路况的验证。
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