基于卫星图像和GPS轨迹推断高分辨率交通事故风险地图

Songtao He, M. Sadeghi, S. Chawla, Mohammad Alizadeh, Harinarayanan Balakrishnan, Sam Madden
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引用次数: 11

摘要

交通事故造成的损失约占全球GDP的3%,是儿童和年轻人死亡的主要原因。事故风险图是监测和减轻事故风险的有用工具。我们提出了一种生成高分辨率(5米)事故风险地图的技术。在这种高分辨率下,事故是稀疏的,风险估计受到偏差-方差权衡的限制。先前事故风险图要么估计低效用(高偏差)的低分辨率图,要么使用基于频率的估计技术,无法准确预测事故实际发生的位置(高方差)。为了改善这种权衡,我们使用了端到端的深度架构,可以输入卫星图像、GPS轨迹、道路地图和事故历史。我们对总面积为7,488 km2的美国四个大都市区进行了评估,结果表明我们的技术在分辨率和精度方面优于先前的工作。
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Inferring high-resolution traffic accident risk maps based on satellite imagery and GPS trajectories
Traffic accidents cost about 3% of the world’s GDP and are the leading cause of death in children and young adults. Accident risk maps are useful tools to monitor and mitigate accident risk. We present a technique to generate high-resolution (5 meters) accident risk maps. At this high resolution, accidents are sparse and risk estimation is limited by bias-variance trade-off. Prior accident risk maps either estimate low-resolution maps that are of low utility (high bias), or they use frequency-based estimation techniques that inaccurately predict where accidents actually happen (high variance). To improve this trade-off, we use an end-to-end deep architecture that can input satellite imagery, GPS trajectories, road maps and the history of accidents. Our evaluation on four metropolitan areas in the US with a total area of 7,488 km2 shows that our technique outperform prior work in terms of resolution and accuracy.
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