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Risk-Sensitive Sequential Action Control with Multi-Modal Human Trajectory Forecasting for Safe Crowd-Robot Interaction

机译:具有多模态人轨迹预测的风险敏感的顺序行动控制,用于安全人群机器人互动

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This paper presents a novel online framework for safe crowd-robot interaction based on risk-sensitive stochastic optimal control, wherein the risk is modeled by the entropic risk measure. The sampling-based model predictive control relies on mode insertion gradient optimization for this risk measure as well as Trajectron++, a state-of-the-art generative model that produces multimodal probabilistic trajectory forecasts for multiple interacting agents. Our modular approach decouples the crowd-robot interaction into learning-based prediction and model-based control, which is advantageous compared to end-to-end policy learning methods in that it allows the robot’s desired behavior to be specified at run time. In particular, we show that the robot exhibits diverse interaction behavior by varying the risk sensitivity parameter. A simulation study and a real-world experiment show that the proposed online framework can accomplish safe and efficient navigation while avoiding collisions with more than 50 humans in the scene.
机译:本文提出了一种基于风险敏感随机最佳控制的安全人群互动的新型在线框架,其中风险是通过熵风险措施建模的风险。基于采样的模型预测控制依赖于这种风险措施的模式插入梯度优化以及Trajectron ++,一种最先进的生成模型,为多个相互作用代理产生多峰概率轨迹预测。我们的模块化方法将人群机器人的交互与基于学习的预测和模型的控制脱节,与端到端策略学习方法相比是有利的,因为它允许在运行时指定机器人的期望行为。特别是,我们表明机器人通过改变风险敏感性参数来表现出不同的相互作用行为。仿真研究和真实的实验表明,所提出的在线框架可以实现安全高效的导航,同时避免现场中有超过50人的碰撞。

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