Increased interaction between and among pedestrians and vehicles in the crowded urban environments of today gives rise to a negative side-effect: a growth in traffic accidents, with pedestrians being the most vulnerable elements. Recent work has shown that Convolutional Neural Networks are able to accurately predict accident rates exploiting Street View imagery along urban roads. The promising results point to the plausibility of aided design of safe urban landscapes, for both pedestrians and vehicles. In this paper, by considering historical accident data and Street View images, we detail how to automatically predict the impact (increase or decrease) of urban interventions on accident incidence. The results are positive, rendering an accuracies ranging from 60 to 80%. We additionally provide an interpretability analysis to unveil which specific categories of urban features impact accident rates positively or negatively. Considering the transportation network substrates (sidewalk and road networks) and their demand, we integrate these results to a complex network framework, to estimate the effective impact of urban change on the safety of pedestrians and vehicles. Results show that public authorities may leverage on machine learning tools to prioritize targeted interventions, since our analysis show that limited improvement is obtained with current tools. Further, our findings have a wider application range such as the design of safe urban routes for pedestrians or to the field of driver-assistance technologies.
翻译:在当今拥挤的城市环境中,行人和车辆之间互动的增加产生了消极的副作用:交通事故增加,行人是最易受伤害的因素;最近的工作表明,进进神经网络能够准确预测事故率,利用城市道路沿线的街道景象图象;有希望的结果表明,为行人和车辆设计安全城市景观的辅助设计是可行的;在本文件中,通过考虑历史事故数据和街景图像,我们详细说明如何自动预测城市干预对事故发生率的影响(增加或减少);结果是积极的,提供了60%至80%的便利;我们还提供了可解释性分析,以公布哪些特定类别的城市特征对事故率产生积极或消极影响;考虑到运输网络的分层(边行道和公路网络)及其需求,我们将这些结果纳入复杂的网络框架,以估计城市变化对行人和车辆安全的有效影响;结果显示,公共当局可以利用机器学习工具确定有针对性的干预措施的优先次序,因为我们的分析表明,在安全行车工具的设计上取得了有限的改进,从而扩大了行车技术的应用范围。