Traffic accidents are a threat to human lives, particularly pedestrians causing premature deaths. Therefore, it is necessary to devise systems to prevent accidents in advance and respond proactively, using potential risky situations as one of the surrogate safety measurements. This study introduces a new concept of a pedestrian safety system that combines the field and the centralized processes. The system can warn of upcoming risks immediately in the field and improve the safety of risk frequent areas by assessing the safety levels of roads without actual collisions. In particular, this study focuses on the latter by introducing a new analytical framework for a crosswalk safety assessment with behaviors of vehicle/pedestrian and environmental features. We obtain these behavioral features from actual traffic video footage in the city with complete automatic processing. The proposed framework mainly analyzes these behaviors in multidimensional perspectives by constructing a data cube structure, which combines the LSTM based predictive collision risk estimation model and the on line analytical processing operations. From the PCR estimation model, we categorize the severity of risks as four levels and apply the proposed framework to assess the crosswalk safety with behavioral features. Our analytic experiments are based on two scenarios, and the various descriptive results are harvested the movement patterns of vehicles and pedestrians by road environment and the relationships between risk levels and car speeds. Thus, the proposed framework can support decision makers by providing valuable information to improve pedestrian safety for future accidents, and it can help us better understand their behaviors near crosswalks proactively. In order to confirm the feasibility and applicability of the proposed framework, we implement and apply it to actual operating CCTVs in Osan City, Korea.
翻译:交通事故是对人命的威胁,特别是行人过早死亡。因此,有必要设计预先预防事故并主动应对的系统,将潜在危险情况作为代用安全测量标准之一。本研究引入了将现场和中央流程相结合的行人安全系统的新概念。该系统可以对即将到来的外地风险提出警告,并通过评估道路安全水平而不发生实际碰撞来提高频繁发生风险地区的安全性。特别是,本研究侧重于后者,采用新的分析框架进行跨行安全评估,评估车辆/行距和环境特征的行为。我们从城市实际交通录像中获取这些行为特征,并进行完整的自动处理。拟议框架主要从多层面角度分析行人安全系统,将现场和中央流程流程结合起来。该系统将基于预测碰撞风险估计模型和线上分析处理操作操作操作的LSTM系统结合起来。从PCR估计模型中,我们将风险的严重程度分为四个级别,并采用拟议的框架,用行为特征评估跨行道安全。我们的分析实验基于两种设想方案,从实际交通视频中进行实际应用这些行为特征的动作特征。我们的分析性实验主要从多方面分析这些行为,从多方面分析这些特征分析这些行为,从多方面分析这些行为风险,通过数据模型分析,从而改善车辆的行距关系和行距关系,从而测测测测测测测路路路路规则。