具有社会意识的大规模人群预测

Alexandre Alahi, Vignesh Ramanathan, Li Fei-Fei
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引用次数: 183

摘要

在城市中心或火车站等拥挤的空间,人类的流动性看起来很复杂,但往往只受少数几个原因的影响。我们建议通过引入在火车站收集的4200万个轨迹数据集来定量研究拥挤环境。基于这个数据集,我们解决了预测行人目的地的问题,这是理解大规模人群流动的核心问题。我们需要克服有限数量的观测(例如稀疏的摄像机)所带来的挑战,以及不同摄像机之间行人外观线索的变化。此外,我们通常会限制行人在场景中的移动方式,将其编码为优先于原点和目的地(OD)偏好的先验。我们提出了一个新的描述符,称为社会亲和力图(Social Affinity Maps, SAM),以连接人群中破碎或未观察到的个体轨迹,同时在我们的框架中使用OD-prior。我们的实验表明,通过使用SAM特征和OD先验,性能得到了改善。据我们所知,我们的工作是第一批为更好地理解百万行人规模的人群行为提供令人鼓舞的结果的研究之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Socially-Aware Large-Scale Crowd Forecasting
In crowded spaces such as city centers or train stations, human mobility looks complex, but is often influenced only by a few causes. We propose to quantitatively study crowded environments by introducing a dataset of 42 million trajectories collected in train stations. Given this dataset, we address the problem of forecasting pedestrians' destinations, a central problem in understanding large-scale crowd mobility. We need to overcome the challenges posed by a limited number of observations (e.g. sparse cameras), and change in pedestrian appearance cues across different cameras. In addition, we often have restrictions in the way pedestrians can move in a scene, encoded as priors over origin and destination (OD) preferences. We propose a new descriptor coined as Social Affinity Maps (SAM) to link broken or unobserved trajectories of individuals in the crowd, while using the OD-prior in our framework. Our experiments show improvement in performance through the use of SAM features and OD prior. To the best of our knowledge, our work is one of the first studies that provides encouraging results towards a better understanding of crowd behavior at the scale of million pedestrians.
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