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GD-GAN: Generative Adversarial Networks for Trajectory Prediction and Group Detection in Crowds

机译:GD-GAN:生成对抗网络,用于人群中的轨迹预测和组检测

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This paper presents a novel deep learning framework for human trajectory prediction and detecting social group membership in crowds. We introduce a generative adversarial pipeline which preserves the spatio-temporal structure of the pedestrian's neighbourhood, enabling us to extract relevant attributes describing their social identity. We formulate the group detection task as an unsupervised learning problem, obviating the need for supervised learning of group memberships via hand labeled databases, allowing us to directly employ the proposed framework in different surveillance settings. We evaluate the proposed trajectory prediction and group detection frameworks on multiple public benchmarks, and for both tasks the proposed method demonstrates its capability to better anticipate human sociological behaviour compared to the existing state-of-the-art methods (This research was supported by the Australian Research Council's Linkage Project LP140100282 "Improving Productivity and Efficiency of Australian Airports").
机译:本文提出了一种新颖的深度学习框架,用于人类轨迹预测和检测人群中的社会群体成员身份。我们引入了一条生成对抗路线,该路线保留了行人邻居的时空结构,使我们能够提取描述其社会身份的相关属性。我们将组检测任务表述为无监督学习问题,从而避免了通过手工标记的数据库对组成员资格进行有监督学习的需要,从而使我们能够在不同的监视环境中直接采用建议的框架。我们在多个公共基准上评估了拟议的轨迹预测和群体检测框架,并且与现有的最新技术相比,拟议的方法证明了其能够更好地预测人类社会行为的能力(本研究得到了澳大利亚研究委员会的链接项目LP140100282“提高澳大利亚机场的生产率和效率”。

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