Robot Navigation in Constrained Pedestrian Environments using Reinforcement Learning

10/16/2020
by   Claudia Pérez-D'Arpino, et al.
0

Navigating fluently around pedestrians is a necessary capability for mobile robots deployed in human environments, such as office buildings and homes. While related literature has addressed the co-navigation problem focused on the scalability with the number of pedestrians in open spaces, typical indoor environments present the additional challenge of constrained spaces such as corridors, doorways and crosswalks that limit maneuverability and influence patterns of pedestrian interaction. We present an approach based on reinforcement learning to learn policies capable of dynamic adaptation to the presence of moving pedestrians while navigating between desired locations in constrained environments. The policy network receives guidance from a motion planner that provides waypoints to follow a globally planned trajectory, whereas the reinforcement component handles the local interactions. We explore a compositional principle for multi-layout training and find that policies trained in a small set of geometrically simple layouts successfully generalize to unseen and more complex layouts that exhibit composition of the simple structural elements available during training. Going beyond wall-world like domains, we show transfer of the learned policy to unseen 3D reconstructions of two real environments (market, home). These results support the applicability of the compositional principle to real-world environments and indicate promising usage of agent simulation within reconstructed environments for tasks that involve interaction.

READ FULL TEXT

page 2

page 5

page 8

page 12

research
03/30/2022

Learning to Socially Navigate in Pedestrian-rich Environments with Interaction Capacity

Existing navigation policies for autonomous robots tend to focus on coll...
research
11/08/2020

Learning World Transition Model for Socially Aware Robot Navigation

Moving in dynamic pedestrian environments is one of the important requir...
research
04/13/2021

Group Surfing: A Pedestrian-Based Approach to Sidewalk Robot Navigation

In this paper, we propose a novel navigation system for mobile robots in...
research
11/12/2020

Anticipatory Navigation in Crowds by Probabilistic Prediction of Pedestrian Future Movements

Critical for the coexistence of humans and robots in dynamic environment...
research
10/15/2022

Robot Navigation Anticipative Strategies in Deep Reinforcement Motion Planning

The navigation of robots in dynamic urban environments, requires elabora...
research
01/20/2022

Sim-to-Lab-to-Real: Safe Reinforcement Learning with Shielding and Generalization Guarantees

Safety is a critical component of autonomous systems and remains a chall...
research
05/28/2018

Value Propagation Networks

We present Value Propagation (VProp), a parameter-efficient differentiab...

Please sign up or login with your details

Forgot password? Click here to reset