TY - GEN
T1 - Decision-Making for Autonomous Driving with Multiple Experts via Skill Discovery and Transformer
AU - Meng, Jing
AU - Wang, Haoyang
AU - Lin, Yunlong
AU - Lu, Chao
AU - Gong, Jianwei
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - In the urban environment, intelligent vehicles need to operate multiple driving tasks to handle complex and uncertain scenarios. Currently, Rule-based methods struggle with complex scenarios, only handling specific or simple cases. Data-driven methods, while more flexible, are reliant on extensive data, which has poor generalization to unfamiliar scenarios. Although reinforcement learning (RL) has contributed to pioneering new ideas in autonomous driving, it struggles to converge and fails to develop effective strategies as the complexity of tasks escalates. To solve these problems, we propose a hierarchical decision-making framework, named Hierarchical Multi-expert Decision Transformer (HMDT), which combines skill discovery and Decision Transformer. As a classic hierarchical reinforcement learning method, skill discovery decomposes a complex task into multiple basic subtasks to reduce the complexity. Decision Transformer models the traditional reinforcement learning as a sequence modeling problem, which learns the driving strategies for the sub-tasks. The proposed framework is evaluated in a complex urban environment built in the CARLA simulator. The experimental results demonstrate that HMDT achieves higher completion rates in single tasks and performs better in complex traffic tasks compared to baseline methods.
AB - In the urban environment, intelligent vehicles need to operate multiple driving tasks to handle complex and uncertain scenarios. Currently, Rule-based methods struggle with complex scenarios, only handling specific or simple cases. Data-driven methods, while more flexible, are reliant on extensive data, which has poor generalization to unfamiliar scenarios. Although reinforcement learning (RL) has contributed to pioneering new ideas in autonomous driving, it struggles to converge and fails to develop effective strategies as the complexity of tasks escalates. To solve these problems, we propose a hierarchical decision-making framework, named Hierarchical Multi-expert Decision Transformer (HMDT), which combines skill discovery and Decision Transformer. As a classic hierarchical reinforcement learning method, skill discovery decomposes a complex task into multiple basic subtasks to reduce the complexity. Decision Transformer models the traditional reinforcement learning as a sequence modeling problem, which learns the driving strategies for the sub-tasks. The proposed framework is evaluated in a complex urban environment built in the CARLA simulator. The experimental results demonstrate that HMDT achieves higher completion rates in single tasks and performs better in complex traffic tasks compared to baseline methods.
KW - Decision Transformer
KW - decision-making in multiple tasks
KW - Intelligent vehicle
KW - Mixture of Experts
KW - skill discovery
UR - http://www.scopus.com/inward/record.url?scp=85217999564&partnerID=8YFLogxK
U2 - 10.1109/ICUS61736.2024.10840029
DO - 10.1109/ICUS61736.2024.10840029
M3 - Conference contribution
AN - SCOPUS:85217999564
T3 - Proceedings of 2024 IEEE International Conference on Unmanned Systems, ICUS 2024
SP - 1417
EP - 1422
BT - Proceedings of 2024 IEEE International Conference on Unmanned Systems, ICUS 2024
A2 - Song, Rong
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2024 IEEE International Conference on Unmanned Systems, ICUS 2024
Y2 - 18 October 2024 through 20 October 2024
ER -