CVApr 5, 2025

JarvisIR: Elevating Autonomous Driving Perception with Intelligent Image Restoration

arXiv:2504.04158v137 citationsh-index: 14CVPR
Originality Highly original
AI Analysis

This addresses robust perception for autonomous driving in adverse weather, representing a strong specific gain with a novel method for a known bottleneck.

The paper tackles the problem of unpredictable weather degradations in vision-centric autonomous driving perception by proposing JarvisIR, a VLM-powered agent that manages multiple expert restoration models, achieving a 50% improvement in average perception metrics on a real-world benchmark.

Vision-centric perception systems struggle with unpredictable and coupled weather degradations in the wild. Current solutions are often limited, as they either depend on specific degradation priors or suffer from significant domain gaps. To enable robust and autonomous operation in real-world conditions, we propose JarvisIR, a VLM-powered agent that leverages the VLM as a controller to manage multiple expert restoration models. To further enhance system robustness, reduce hallucinations, and improve generalizability in real-world adverse weather, JarvisIR employs a novel two-stage framework consisting of supervised fine-tuning and human feedback alignment. Specifically, to address the lack of paired data in real-world scenarios, the human feedback alignment enables the VLM to be fine-tuned effectively on large-scale real-world data in an unsupervised manner. To support the training and evaluation of JarvisIR, we introduce CleanBench, a comprehensive dataset consisting of high-quality and large-scale instruction-responses pairs, including 150K synthetic entries and 80K real entries. Extensive experiments demonstrate that JarvisIR exhibits superior decision-making and restoration capabilities. Compared with existing methods, it achieves a 50% improvement in the average of all perception metrics on CleanBench-Real. Project page: https://cvpr2025-jarvisir.github.io/.

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