Online Robot Motion Planning Methodology Guided by Group Social Proxemics Feature
Xuan Mu, Xiaorui Liu, Shuai Guo, Wenzheng Chi, Wei Wang, Shuzhi Sam Ge

TL;DR
This paper introduces a novel social-aware robot motion planning approach that models group proxemics and integrates it into navigation, enabling robots to interact more naturally in social environments.
Contribution
It presents a new group clustering and proxemics modeling method that improves robot social awareness and path planning in group scenarios.
Findings
High accuracy in group recognition
Efficient path generation among groups
Enhanced social behavior in robot navigation
Abstract
Nowadays robot is supposed to demonstrate human-like perception, reasoning and behavior pattern in social or service application. However, most of the existing motion planning methods are incompatible with above requirement. A potential reason is that the existing navigation algorithms usually intend to treat people as another kind of obstacle, and hardly take the social principle or awareness into consideration. In this paper, we attempt to model the proxemics of group and blend it into the scenario perception and navigation of robot. For this purpose, a group clustering method considering both social relevance and spatial confidence is introduced. It can enable robot to identify individuals and divide them into groups. Next, we propose defining the individual proxemics within magnetic dipole model, and further established the group proxemics and scenario map through vector-field…
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Taxonomy
TopicsRobotics and Automated Systems
