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Socially aware motion planning with deep reinforcement learning

机译:社会意识运动规划,具有深度加强学习

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For robotic vehicles to navigate safely and efficiently in pedestrian-rich environments, it is important to model subtle human behaviors and navigation rules (e.g., passing on the right). However, while instinctive to humans, socially compliant navigation is still difficult to quantify due to the stochasticity in people's behaviors. Existing works are mostly focused on using feature-matching techniques to describe and imitate human paths, but often do not generalize well since the feature values can vary from person to person, and even run to run. This work notes that while it is challenging to directly specify the details of what to do (precise mechanisms of human navigation), it is straightforward to specify what not to do (violations of social norms). Specifically, using deep reinforcement learning, this work develops a time-efficient navigation policy that respects common social norms. The proposed method is shown to enable fully autonomous navigation of a robotic vehicle moving at human walking speed in an environment with many pedestrians.
机译:对于机器人车辆,安全和有效地在富有的行人的环境中导航,重要的是模拟细微的人类行为和导航规则(例如,通过右侧)。然而,虽然本能对人类来说,由于人们行为的瞬间,社会兼容的导航仍然难以量化。现有的作品主要集中在使用功能匹配技术来描述和模仿人道之路,但通常不会概括到,因为特征值可能因人员而异,甚至运行运行。这项工作指出,虽然直接指定要做的内容的细节有挑战性(人类导航的精确机制),但指定不做的是(侵犯社会规范)很简单。具体而言,使用深度加强学习,这项工作开发了一个尊重普遍社会规范的时间有效的导航政策。所提出的方法被证明能够在有许多行人的环境中以人行道速度移动的机器人车辆的全身自主导航。

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