Bilevel Layer-Positioning LoRA for Real Image Dehazing
arXiv cs.CV / 3/12/2026
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Key Points
- The paper proposes a haze-to-clear text-directed loss that leverages CLIP's cross-modal capabilities to formulate real image dehazing as a semantic alignment problem in latent space, providing unsupervised guidance without reference images.
- It introduces BiLaLoRA (Bilevel Layer-positioning LoRA), which jointly learns LoRA parameters and automatically searches injection layers for targeted adaptation of critical network layers.
- The method reports superior performance on multiple real-world dehazing benchmarks, demonstrating effective adaptation without full fine-tuning.
- The authors release code on GitHub for reproducibility and practical adoption.
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