CAPS: Context-Aware Priority Sampling for Enhanced Imitation Learning in Autonomous Driving
March 27, 2026·,,,,,,,,·
0 min read
Hamidreza mirkhani
Behzad khamidehi
Ehsan ahmadi
Mohammed elmahgiubi
Weize zhang
Fazel arasteh
Umar rajguru
Kasra rezaee
Dongfeng bai
Abstract
In this paper, we introduce Context-Aware Priority Sampling (CAPS), a novel method designed to enhance data efficiency in learning-based autonomous driving systems. CAPS addresses the challenge of imbalanced datasets in imitation learning by leveraging Vector Quantized Variational Autoencoders (VQ-VAEs). In this way, we can get structured and interpretable data representations, which help to reveal meaningful patterns in the data. These patterns are used to group the data into clusters, with each sample being assigned a cluster ID. The cluster IDs are then used to re-balance the dataset, ensuring that rare yet valuable samples receive higher priority during training. We evaluate our method through closed-loop experiments in the CARLA simulator. The results on Bench2Drive scenarios demonstrate the effectiveness of CAPS in enhancing model generalization, with substantial improvements in both driving score and success rate.
Type
Publication
Accepted at IEEE International Conference on Robotics and Automation (ICRA 2026)