Task-Driven Domain-Agnostic Learning with Information Bottleneck for Autonomous Steering


Abstract

Environments for autonomous driving can vary from place to place, leading to challenges in designing a learning model for a new scene. Transfer learning can leverage knowledge from a learned domain to a new domain with limited data. In this work, we focus on end-to-end autonomous driving as the target task, consisting of both perception and control. We first utilize information bottleneck analysis to build a causal graph that defines our framework and the loss function; then we propose a novel domain-agnostic learning method for autonomous steering based on our analysis of training data, network architecture, and training paradigm. Experiments show that our method outperforms other SOTA methods.

Paper

Task-Driven Domain-Agnostic Learning with Information Bottleneck for Autonomous Steering (ICRA 2024)
Yu Shen, Laura Zheng, Tianyi Zhou, Ming C. Lin.

Video

Demo video can be found here

Slides

Slides can be found here