基于时变行人运动动力学的轨迹级行为建模

Aniket Bera, Sujeong Kim, Dinesh Manocha
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引用次数: 4

摘要

提出了一种新的交互式多智能体仿真算法来模拟行人运动动力学。我们使用统计技术来计算从人群视频中提取的2D轨迹的运动模式和运动动力学。我们的公式提取了现实世界智能体的动态行为特征,并使用它们来学习动态的运动特征。所学习的行为被用于生成虚拟代理的可信轨迹以及长期行人轨迹预测。我们的方法可以与任何轨迹提取方法集成,包括手动跟踪,传感器和在线跟踪方法。在轨迹预测和数据驱动的行人模拟方面,我们强调了我们的方法在许多具有噪声、稀疏采样轨迹的室内和室外场景中的优势。
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Modeling Trajectory-level Behaviors using Time Varying Pedestrian Movement Dynamics
We present a novel interactive multi-agent simulation algorithm to model pedestrian movement dynamics. We use statistical techniques to compute the movement patterns and motion dynamics from 2D trajectories extracted from crowd videos. Our formulation extracts the dynamic behavior features of real-world agents and uses them to learn movement characteristics on the fly. The learned behaviors are used to generate plausible trajectories of virtual agents as well as for long-term pedestrian trajectory prediction. Our approach can be integrated with any trajectory extraction method, including manual tracking, sensors, and online tracking methods. We highlight the benefits of our approach on many indoor and outdoor scenarios with noisy, sparsely sampled trajectory in terms of trajectory prediction and data-driven pedestrian simulation.
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