Title
A Closed-Loop Perception, Decision-Making and Reasoning Mechanism for Human-Like Navigation.
Abstract
Reliable navigation systems have a wide range of applications in robotics and autonomous driving. Current approaches employ an open-loop process that converts sensor inputs directly into actions. However, these open-loop schemes are challenging to handle complex and dynamic real-world scenarios due to their poor generalization. Imitating human navigation, we add a reasoning process to convert actions back to internal latent states, forming a two-stage closed loop of perception, decision-making, and reasoning. Firstly, VAE-Enhanced Demonstration Learning endows the model with the understanding of basic navigation rules. Then, two dual processes in RL-Enhanced Interaction Learning generate reward feedback for each other and collectively enhance obstacle avoidance capability. The reasoning model can substantially promote generalization and robustness, and facilitate the deployment of the algorithm to real-world robots without elaborate transfers. Experiments show our method is more adaptable to novel scenarios compared with state-of-the-art approaches.
Year
DOI
Venue
2022
10.24963/ijcai.2022/654
International Joint Conference on Artificial Intelligence
Keywords
DocType
Citations 
Robotics: Applications,Machine Learning: Deep Reinforcement Learning,Robotics: Learning in Robotics,Robotics: Motion and Path Planning
Conference
0
PageRank 
References 
Authors
0.34
0
8
Name
Order
Citations
PageRank
Wenqi Zhang100.34
Kai Zhao201.01
Peng Li301.01
Xiao Zhu400.68
Yongliang Shen500.34
Yanna Ma600.68
Yingfeng Chen700.34
Weiming Lu800.34