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A data-driven path planning model for crowd capacity analysis

机译:用于人群容量分析的数据驱动路径规划模型

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In this paper, an agent-based crowd simulation model that focuses on path planning layer of (1) origin/destination popularities and (2) route choice is developed. This path planning model improves on the existing mathematical modeling and pattern recognition approaches by utilizing different sources of data to drive and validate it: video data was used for the open space scenarios and virtual reality experiments were applied for constrained space scenarios. For open space scenarios with video coverage, the density map of the video is extracted to calibrate the origin/destination popularities and the route probabilities among them. Factors related to space syntax, such as the traveling distance and turning angle, are proven effective features of the path planning model in this scenario. For constrained space scenarios, where the coverage of videos is usually limited, virtual reality experiments can be applied to learn the route choice model parameters at a fine granularity, particularly considering the crowdedness of the surroundings besides the space syntax factors. The navigation behaviors of players under different configurations in the virtual reality experiments were retrieved to train the route choice models using Support Vector Machine (SVM) model. The trained route choice model then simulates the crowd motion more realistically under different densities. We demonstrate the usefulness of the data-driven path planning model for crowd capacity analysis of a building layout. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本文中,建立了一个基于代理的人群仿真模型,该模型专注于(1)起源/目的地受欢迎程度和(2)路线选择的路径规划层。这种路径规划模型通过利用不同的数据源来驱动和验证它来改进现有的数学建模和模式识别方法:视频数据用于开放空间场景,虚拟现实实验用于受限空间场景。对于具有视频覆盖范围的开放空间场景,将提取视频的密度图,以校准起点/终点的人气以及其中的路线概率。在这种情况下,与空间语法相关的因素(例如行进距离和转弯角度)被证明是路径规划模型的有效特征。对于通常限于视频覆盖范围的受限空间场景,可以应用虚拟现实实验以精细的粒度来学习路线选择模型参数,尤其是考虑到空间语法因素以外的周围人群。利用支持向量机(SVM)模型检索虚拟现实实验中不同配置下玩家的导航行为,以训练路线选择模型。然后,经过训练的路线选择模型将更实际地模拟人群在不同密度下的运动。我们展示了数据驱动路径规划模型对建筑物布局的人群容量分析的有用性。 (C)2019 Elsevier B.V.保留所有权利。

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