Design of Efficient Deep Learning models for Determining Road Surface Condition from Roadside Camera Images and Weather Data

September 22, 2020 ยท Entered Twilight ยท ๐Ÿ› arXiv.org

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Authors Juan Carrillo, Mark Crowley, Guangyuan Pan, Liping Fu arXiv ID 2009.10282 Category cs.CV: Computer Vision Cross-listed cs.AI, eess.IV Citations 7 Venue arXiv.org Repository https://github.com/jmcarrillog/deep-learning-for-road-surface-condition โญ 20 Last Checked 1 month ago
Abstract
Road maintenance during the Winter season is a safety critical and resource demanding operation. One of its key activities is determining road surface condition (RSC) in order to prioritize roads and allocate cleaning efforts such as plowing or salting. Two conventional approaches for determining RSC are: visual examination of roadside camera images by trained personnel and patrolling the roads to perform on-site inspections. However, with more than 500 cameras collecting images across Ontario, visual examination becomes a resource-intensive activity, difficult to scale especially during periods of snowstorms. This paper presents the results of a study focused on improving the efficiency of road maintenance operations. We use multiple Deep Learning models to automatically determine RSC from roadside camera images and weather variables, extending previous research where similar methods have been used to deal with the problem. The dataset we use was collected during the 2017-2018 Winter season from 40 stations connected to the Ontario Road Weather Information System (RWIS), it includes 14.000 labeled images and 70.000 weather measurements. We train and evaluate the performance of seven state-of-the-art models from the Computer Vision literature, including the recent DenseNet, NASNet, and MobileNet. Moreover, by following systematic ablation experiments we adapt previously published Deep Learning models and reduce their number of parameters to about ~1.3% compared to their original parameter count, and by integrating observations from weather variables the models are able to better ascertain RSC under poor visibility conditions.
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