论文标题

通过卫星图像中的无监督特征提取来识别安全的交叉点设计

Identifying safe intersection design through unsupervised feature extraction from satellite imagery

论文作者

Wijnands, Jasper S., Zhao, Haifeng, Nice, Kerry A., Thompson, Jason, Scully, Katherine, Guo, Jingqiu, Stevenson, Mark

论文摘要

世界卫生组织已将更安全的交叉点的设计列为减少全球道路创伤的关键干预措施。本文介绍了基于空中图像和深度学习的大国中系统分析所有交叉路口的首次研究。下载了大约900,000颗卫星图像,用于澳大利亚的所有交叉点,并强调道路基础设施的定制计算机视觉技术。深层自动编码器提取了高级功能,包括交叉点的类型,大小,形状,车道标记和复杂性,用于聚集相似的设计。澳大利亚远程信息处理数据集将基础设施设计与6600万公里驾驶期间捕获的行为联系起来。这表明在四向交叉路口比四向相交的硬加速度事件(每辆车)更频繁,在T交换处相对较低的硬减速频率,并且在回旋处的平均速度持续较低。总体而言,特定于领域的特征提取可以识别基础设施改进,这可能会导致更安全的驾驶行为,从而减少道路创伤。

The World Health Organization has listed the design of safer intersections as a key intervention to reduce global road trauma. This article presents the first study to systematically analyze the design of all intersections in a large country, based on aerial imagery and deep learning. Approximately 900,000 satellite images were downloaded for all intersections in Australia and customized computer vision techniques emphasized the road infrastructure. A deep autoencoder extracted high-level features, including the intersection's type, size, shape, lane markings, and complexity, which were used to cluster similar designs. An Australian telematics data set linked infrastructure design to driving behaviors captured during 66 million kilometers of driving. This showed more frequent hard acceleration events (per vehicle) at four- than three-way intersections, relatively low hard deceleration frequencies at T-intersections, and consistently low average speeds on roundabouts. Overall, domain-specific feature extraction enabled the identification of infrastructure improvements that could result in safer driving behaviors, potentially reducing road trauma.

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