Continual Adaptation for Autonomous Driving with the Mixture of Progressive Experts Network
Cui, Yixin, Yang, Shuo, Wan, Chi, Li, Xincheng, Xing, Jiaming, Zhang, Yuanjian, Huang, Yanjun, Chen, Hong
–arXiv.org Artificial Intelligence
Learning-based autonomous driving requires continuous integration of diverse knowledge in complex traffic , yet existing methods exhibit significant limitations in adaptive capabilities. Addressing this gap demands autonomous driving systems that enable continual adaptation through dynamic adjustments to evolving environmental interactions. This underscores the necessity for enhanced continual learning capabilities to improve system adaptability. To address these challenges, the paper introduces a dynamic progressive optimization framework that facilitates adaptation to variations in dynamic environments, achieved by integrating reinforcement learning and supervised learning for data aggregation. Building on this framework, we propose the Mixture of Progressive Experts (MoPE) network. The proposed method selectively activates multiple expert models based on the distinct characteristics of each task and progressively refines the network architecture to facilitate adaptation to new tasks. Simulation results show that the MoPE model outperforms behavior cloning methods, achieving up to a 7.8% performance improvement in intricate urban road environments.
arXiv.org Artificial Intelligence
Feb-16-2025
- Genre:
- Research Report > New Finding (0.34)
- Industry:
- Automobiles & Trucks (1.00)
- Transportation > Ground
- Road (1.00)
- Technology: