Group-Aware Robot Navigation in Crowded Environments
- URL: http://arxiv.org/abs/2012.12291v1
- Date: Tue, 22 Dec 2020 19:04:40 GMT
- Title: Group-Aware Robot Navigation in Crowded Environments
- Authors: Kapil Katyal, Yuxiang Gao, Jared Markowitz, I-Jeng Wang, Chien-Ming
Huang
- Abstract summary: This paper explores learning group-aware navigation policies based on dynamic group formation using deep reinforcement learning.
We show that group-aware policies, compared to baseline policies that neglect human groups, achieve greater robot navigation performance.
Our results contribute to the development of social navigation and the integration of mobile robots into human environments.
- Score: 8.154698016722815
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Human-aware robot navigation promises a range of applications in which mobile
robots bring versatile assistance to people in common human environments. While
prior research has mostly focused on modeling pedestrians as independent,
intentional individuals, people move in groups; consequently, it is imperative
for mobile robots to respect human groups when navigating around people. This
paper explores learning group-aware navigation policies based on dynamic group
formation using deep reinforcement learning. Through simulation experiments, we
show that group-aware policies, compared to baseline policies that neglect
human groups, achieve greater robot navigation performance (e.g., fewer
collisions), minimize violation of social norms and discomfort, and reduce the
robot's movement impact on pedestrians. Our results contribute to the
development of social navigation and the integration of mobile robots into
human environments.
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