Conditional Generative Adversarial Networks for Optimal Path Planning

Autor: Max Q.-H. Meng, Jianbang Liu, Jiankun Wang, Nachuan Ma
Rok vydání: 2022
Předmět:
Zdroj: IEEE Transactions on Cognitive and Developmental Systems. 14:662-671
ISSN: 2379-8939
2379-8920
DOI: 10.1109/tcds.2021.3063273
Popis: Path planning plays an important role in autonomous robot systems. Effective understanding of the surrounding environment and efficient generation of an optimal collision-free path are both critical parts for solving path planning problems. Although conventional sampling-based algorithms, such as the rapidly-exploring random tree (RRT) and its improved optimal version (RRT*), have been widely used in path planning problems because of their ability to find a feasible path in even complex environments, they fail to find an optimal path efficiently. To solve this problem and satisfy the two aforementioned requirements, we propose a novel learning-based path planning algorithm which consists of a novel generative model based on the conditional generative adversarial networks (CGAN) and a modified RRT* algorithm (denoted by CGAN-RRT*). Given the map information, our CGAN model can generate an efficient probability distribution of feasible paths, which can be utilized by the CGAN-RRT* algorithm to find an optimal path with a non-uniform sampling strategy. The CGAN model is trained by learning from ground truth maps, each of which is generated by putting all the results of executing the RRT algorithm 50 times on one raw map. We demonstrate the efficient performance of this CGAN model by testing it on two groups of maps and comparing the CGAN-RRT* algorithm with the Informed-RRT* algorithm and conventional RRT* algorithm.
Databáze: OpenAIRE