English

A Deep Learning Approach To Multi-Context Socially-Aware Navigation

Robotics 2021-04-22 v1

Abstract

We present a context classification pipeline to allow a robot to change its navigation strategy based on the observed social scenario. Socially-Aware Navigation considers social behavior in order to improve navigation around people. Most of the existing research uses different techniques to incorporate social norms into robot path planning for a single context. Methods that work for hallway behavior might not work for approaching people, and so on. We developed a high-level decision-making subsystem, a model-based context classifier, and a multi-objective optimization-based local planner to achieve socially-aware trajectories for autonomously sensed contexts. Using a context classification system, the robot can select social objectives that are later used by Pareto Concavity Elimination Transformation (PaCcET) based local planner to generate safe, comfortable, and socially-appropriate trajectories for its environment. This was tested and validated in multiple environments on a Pioneer mobile robot platform; results show that the robot was able to select and account for social objectives related to navigation autonomously.

Keywords

Cite

@article{arxiv.2104.10197,
  title  = {A Deep Learning Approach To Multi-Context Socially-Aware Navigation},
  author = {Santosh Balajee Banisetty and Vineeth Rajamohan and Fausto Vega and David Feil-Seifer},
  journal= {arXiv preprint arXiv:2104.10197},
  year   = {2021}
}
R2 v1 2026-06-24T01:22:53.222Z