论文标题

Smemo:轨迹预测的社交记忆

SMEMO: Social Memory for Trajectory Forecasting

论文作者

Marchetti, Francesco, Becattini, Federico, Seidenari, Lorenzo, Del Bimbo, Alberto

论文摘要

当预测未来轨迹等预测行为时,对人类互动的有效建模至关重要。每个人都有动作会影响围绕代理商,因为每个人都遵守社会非文章规则,例如避免碰撞或跟随团体。在本文中,我们通过从算法的角度看待问题,即作为数据操作任务来对这种交互作用进行建模,这些交互不断地随着时间的流逝而发展。我们根据可端到端的训练工作记忆提供了一个神经网络,该网络充当外部存储,可以在其中连续编写,更新和回忆有关每个代理的信息。我们表明,我们的方法能够学习不同代理的运动之间的可解释的因果关系,从而在多个轨迹预测数据集中获得最先进的结果。

Effective modeling of human interactions is of utmost importance when forecasting behaviors such as future trajectories. Each individual, with its motion, influences surrounding agents since everyone obeys to social non-written rules such as collision avoidance or group following. In this paper we model such interactions, which constantly evolve through time, by looking at the problem from an algorithmic point of view, i.e. as a data manipulation task. We present a neural network based on an end-to-end trainable working memory, which acts as an external storage where information about each agent can be continuously written, updated and recalled. We show that our method is capable of learning explainable cause-effect relationships between motions of different agents, obtaining state-of-the-art results on multiple trajectory forecasting datasets.

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