论文标题
EvolveHyhypergraph:群体感知轨迹预测的动态关系推理
EvolveHypergraph: Group-Aware Dynamic Relational Reasoning for Trajectory Prediction
论文作者
论文摘要
虽然对配对关系的建模已在多代理交互系统中进行了广泛的研究,但捕获更高级别和较大规模的小组活动的能力受到限制。在本文中,我们提出了一种群体感知的关系推理方法(命名为EvolveHyhypergraph),并明确推断了基本的动态发展的关系结构,我们证明了其对多机构轨迹预测的有效性。除了一对节点之间的边缘(即代理)之间的边缘外,我们建议推断出适应性地连接多个节点的超中件,以在不固定Hyperedges的数量的情况下以无聊的方式启用群体感知的关系推理。所提出的方法随着时间的推移而动态发展的关系图和超图表,以捕获关系的演变,而轨迹预测指标将其用于获得未来的状态。此外,我们建议将关系演化的平稳性和推断图或超图的稀疏性正规化,从而有效地提高了训练稳定性并增强了推断关系的解释性。在综合人群模拟和多个现实世界基准数据集上都验证了所提出的方法。我们的方法不解释,合理的团体感知关系,并在长期预测中取得最先进的表现。
While the modeling of pair-wise relations has been widely studied in multi-agent interacting systems, its ability to capture higher-level and larger-scale group-wise activities is limited. In this paper, we propose a group-aware relational reasoning approach (named EvolveHypergraph) with explicit inference of the underlying dynamically evolving relational structures, and we demonstrate its effectiveness for multi-agent trajectory prediction. In addition to the edges between a pair of nodes (i.e., agents), we propose to infer hyperedges that adaptively connect multiple nodes to enable group-aware relational reasoning in an unsupervised manner without fixing the number of hyperedges. The proposed approach infers the dynamically evolving relation graphs and hypergraphs over time to capture the evolution of relations, which are used by the trajectory predictor to obtain future states. Moreover, we propose to regularize the smoothness of the relation evolution and the sparsity of the inferred graphs or hypergraphs, which effectively improves training stability and enhances the explainability of inferred relations. The proposed approach is validated on both synthetic crowd simulations and multiple real-world benchmark datasets. Our approach infers explainable, reasonable group-aware relations and achieves state-of-the-art performance in long-term prediction.