Sequential Neural Barriers for Scalable Dynamic Obstacle Avoidance

07/06/2023
by   Hongzhan Yu, et al.
0

There are two major challenges for scaling up robot navigation around dynamic obstacles: the complex interaction dynamics of the obstacles can be hard to model analytically, and the complexity of planning and control grows exponentially in the number of obstacles. Data-driven and learning-based methods are thus particularly valuable in this context. However, data-driven methods are sensitive to distribution drift, making it hard to train and generalize learned models across different obstacle densities. We propose a novel method for compositional learning of Sequential Neural Control Barrier models (SNCBFs) to achieve scalability. Our approach exploits an important observation: the spatial interaction patterns of multiple dynamic obstacles can be decomposed and predicted through temporal sequences of states for each obstacle. Through decomposition, we can generalize control policies trained only with a small number of obstacles, to environments where the obstacle density can be 100x higher. We demonstrate the benefits of the proposed methods in improving dynamic collision avoidance in comparison with existing methods including potential fields, end-to-end reinforcement learning, and model-predictive control. We also perform hardware experiments and show the practical effectiveness of the approach in the supplementary video.

READ FULL TEXT

page 1

page 2

research
11/09/2022

Vision-based navigation and obstacle avoidance via deep reinforcement learning

Development of navigation algorithms is essential for the successful dep...
research
09/17/2022

A real-time dynamic obstacle tracking and mapping system for UAV navigation and collision avoidance with an RGB-D camera

The real-time dynamic environment perception has become vital for autono...
research
09/18/2022

Dynamic Control Barrier Function-based Model Predictive Control to Safety-Critical Obstacle-Avoidance of Mobile Robot

This paper presents an efficient and safe method to avoid static and dyn...
research
03/19/2022

Reinforcement Learned Distributed Multi-Robot Navigation with Reciprocal Velocity Obstacle Shaped Rewards

The challenges to solving the collision avoidance problem lie in adaptiv...
research
12/08/2022

Enhanced method for reinforcement learning based dynamic obstacle avoidance by assessment of collision risk

In the field of autonomous robots, reinforcement learning (RL) is an inc...
research
01/25/2023

Planning-Assisted Context-Sensitive Autonomous Shepherding of Dispersed Robotic Swarms in Obstacle-Cluttered Environments

Robotic shepherding is a bio-inspired approach to autonomously guiding a...
research
08/01/2021

Learning Maritime Obstacle Detection from Weak Annotations by Scaffolding

Coastal water autonomous boats rely on robust perception methods for obs...

Please sign up or login with your details

Forgot password? Click here to reset