CARIL: Confidence-Aware Regression in Imitation Learning for Autonomous Driving
Journal:
arXiv
Published Date:
Mar 2, 2025
Abstract
End-to-end vision-based imitation learning has demonstrated promising results
in autonomous driving by learning control commands directly from expert
demonstrations. However, traditional approaches rely on either regressionbased
models, which provide precise control but lack confidence estimation, or
classification-based models, which offer confidence scores but suffer from
reduced precision due to discretization. This limitation makes it challenging
to quantify the reliability of predicted actions and apply corrections when
necessary. In this work, we introduce a dual-head neural network architecture
that integrates both regression and classification heads to improve decision
reliability in imitation learning. The regression head predicts continuous
driving actions, while the classification head estimates confidence, enabling a
correction mechanism that adjusts actions in low-confidence scenarios,
enhancing driving stability. We evaluate our approach in a closed-loop setting
within the CARLA simulator, demonstrating its ability to detect uncertain
actions, estimate confidence, and apply real-time corrections. Experimental
results show that our method reduces lane deviation and improves trajectory
accuracy by up to 50%, outperforming conventional regression-only models. These
findings highlight the potential of classification-guided confidence estimation
in enhancing the robustness of vision-based imitation learning for autonomous
driving. The source code is available at
https://github.com/ElaheDlv/Confidence_Aware_IL.