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基于状态精炼 LSTM 的社交感知行人轨迹预测。

Social-Aware Pedestrian Trajectory Prediction via States Refinement LSTM.

出版信息

IEEE Trans Pattern Anal Mach Intell. 2022 May;44(5):2742-2759. doi: 10.1109/TPAMI.2020.3038217. Epub 2022 Apr 1.

DOI:10.1109/TPAMI.2020.3038217
PMID:33196437
Abstract

In the task of pedestrian trajectory prediction, social interaction could be one of the most complicated factors since it is difficult to be interpreted through simple rules. Recent studies have shown a great ability of LSTM networks in learning social behaviors from datasets, e.g., introducing LSTM hidden states of the neighbors at the last time step into LSTM recursion. However, those methods depend on previous neighboring features which lead to a delayed observation. In this paper, we propose a data-driven states refinement LSTM network (SR-LSTM) to enable the utilization of the current intention of neighbors through a message passing framework. Moreover, the model performs in the form of self-updating by jointly refining the current states of all participants, rather than an input-output mechanism served by feature concatenation. In the process of states refinement, a social-aware information selection module consisting of an element-wise motion gate and a pedestrian-wise attention is designed to serve as the guidance of the message passing process. Considering the pedestrian walking space as a graph where each pedestrian is a node and each pedestrian pair with an edge, spatial-edge LSTMs are further exploited to enhance the model capacity, where two kinds of LSTMs interact with each other so that states of them are interactively refined. Experimental results on four widely used pedestrian trajectory datasets, ETH, UCY, PWPD, and NYGC demonstrate the effectiveness of the proposed model.

摘要

在行人轨迹预测任务中,社交交互可能是最复杂的因素之一,因为它很难通过简单的规则来解释。最近的研究表明,LSTM 网络在从数据集学习社交行为方面具有很强的能力,例如,在 LSTM 递归中引入上一个时间步的邻居的 LSTM 隐藏状态。然而,这些方法依赖于之前的邻域特征,导致观察结果延迟。在本文中,我们提出了一种数据驱动的状态细化 LSTM 网络(SR-LSTM),通过消息传递框架来利用邻居的当前意图。此外,该模型通过联合细化所有参与者的当前状态来执行自更新,而不是通过特征连接提供输入-输出机制。在状态细化过程中,设计了一个包含元素运动门和行人注意力的社交感知信息选择模块,作为消息传递过程的指导。考虑到行人行走空间为一个图,其中每个行人是一个节点,每个行人对是一个边,进一步利用空间边 LSTM 来增强模型容量,其中两种 LSTM 相互作用,从而交互细化它们的状态。在 ETH、UCY、PWPD 和 NYGC 四个广泛使用的行人轨迹数据集上的实验结果表明了所提出模型的有效性。

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