App-LSTM:数据驱动生成社会可接受的接近小群代理的轨迹

Fangkai Yang, Christopher E. Peters
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引用次数: 9

摘要

虽然许多涉及人类与代理互动的工作都集中在个人或人群上,但对群体规模的互动建模还没有深入考虑过。在许多应用中,模拟群体代理的互动至关重要,它能使行为更全面、更逼真,涵盖人群和个体层面之间的所有可能性。在本文中,我们提出了一种新颖的神经网络 App-LSTM,用于生成一个代理对一个小型自由对话代理群体的接近轨迹。App-LSTM 模型是在接近群体行为的数据集上进行训练的。由于目前可公开获得的这些相遇数据集有限,我们开发了一种社会感知导航方法,并以此为基础创建了一个半合成数据集,该数据集由真实数据和模拟数据混合组成,代表了安全且社会可接受的接近轨迹。然后,App-LSTM 通过群体交互模块捕捉群体的位置和方向特征,并迭代改进接近代理的当前状态,以更好地关注群体成员的当前意图。我们的研究表明,在生成接近群体轨迹方面,我们的 App-LSTM 优于基线方法。
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App-LSTM: Data-driven Generation of Socially Acceptable Trajectories for Approaching Small Groups of Agents
While many works involving human-agent interactions have focused on individuals or crowds, modelling interactions on the group scale has not been considered in depth. Simulation of interactions with groups of agents is vital in many applications, enabling more comprehensive and realistic behavior encompassing all possibilities between crowd and individual levels. In this paper, we propose a novel neural network App-LSTM to generate the approach trajectory of an agent towards a small free-standing conversational group of agents. The App-LSTM model is trained on a dataset of approach behaviors towards the group. Since current publicly available datasets for these encounters are limited, we develop a social-aware navigation method as a basis for creating a semi-synthetic dataset composed of a mixture of real and simulated data representing safe and socially-acceptable approach trajectories. Via a group interaction module, App-LSTM then captures the position and orientation features of the group and refines the current state of the approaching agent iteratively to better focus on the current intention of group members. We show our App-LSTM outperforms baseline methods in generating approaching group trajectories.
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