使用真实人群数据评估低密度场景下的人群模型

Mingbi Zhao, Wentong Cai, S. Turner
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引用次数: 3

摘要

在本文中,我们评估了五个人群模型的模拟精度:(a) RVO2, (b)社会力量,(c)近似最近邻搜索(ANN), (d)感知-行动图(PAG)和(e)基于聚类的模型(CLUST),通过将模拟结果与真实世界的运动数据进行定量比较六个指标:(a)行驶时间,(b)行驶距离,(c)偏差,(d)速度变化,(e)角度变化和(f)能量。我们使用两种不同人群密度和主要行走方向场景下的真实行人运动数据作为ground truth。结果表明,CLUST模型在大多数指标上优于其他模型,而PAG模型在所有指标上的准确性最差。社会力量模型的表现在很大程度上取决于情景。我们还在一个只有两个智能体的简单场景中对五个模型进行了定性比较,以表明模型之间的异同。研究发现,与ANN、PAG和CLUST模型相比,RVO2模型和社会力模型的模拟轨迹更加对称和规则。ANN、PAG和CLUST模型的运动轨迹反映了用于训练模型的输入数据的运动行为。最后,我们比较了5种模型在两个真实场景下的模拟帧率,并表明通过应用一定的数据预处理技术,PAG和CLUST模型可以比ANN模型获得更好的运行时性能,但仍然比RVO2和社会力模型运行速度慢。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Crowd Models in Low Density Scenarios Using Real-World Crowd Data
In this paper, we evaluate the simulation accuracy of five crowd models: (a) RVO2, (b) social force, (c) approximate nearest neighbor search (ANN), (d) perception-action graph (PAG), and (e) clustering-based model (CLUST) by comparing the simulation results against the real world motion data quantitatively on six metrics: (a) travel time, (b) travel distance, (c) deviation, (d) speed change, (e) angle change, and (f) energy. We use real pedestrians' motion data in two scenarios with different crowd densities and main walking directions as the ground truth. The results demonstrate that the CLUST model outperforms other models in terms of most metrics, while the PAG model has the worst accuracy in all metrics. The performance of the social force model depends largely on the scenario. We also conduct a qualitative comparison of five models on a simple scenario with only two agents, in order to give an indication of the differences and similarities between models. We find that the simulated trajectories of the RVO2 and social force models are more symmetric and regular than that generated by the ANN, PAG and CLUST models. And the ANN, PAG and CLUST models' trajectories reflect the motion behaviors of the input data used to train the models. Finally, we compare the simulation frame rates of five models on two real-world scenarios and show that by applying certain data pre-processing techniques, the PAG and CLUST models can achieve better run-time performances than the ANN model, but still run slower than the RVO2 and social force models.
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