CVMar 1

Neural Discrimination-Prompted Transformers for Efficient UHD Image Restoration and Enhancement

arXiv:2603.00853v15 citationsh-index: 5Has CodeInt J Comput Vis
Originality Incremental advance
AI Analysis

This work addresses efficient high-quality image restoration for applications like photography and vision systems, but it appears incremental as it builds on existing Transformer methods with novel priors.

The paper tackles UHD image restoration and enhancement by proposing UHDPromer, a Transformer-based model that uses neural discrimination priors to improve low-resolution feature representation, achieving state-of-the-art performance with best computational efficiency on three tasks: low-light enhancement, dehazing, and deblurring.

We propose a simple yet effective UHDPromer, a neural discrimination-prompted Transformer, for Ultra-High-Definition (UHD) image restoration and enhancement. Our UHDPromer is inspired by an interesting observation that there implicitly exist neural differences between high-resolution and low-resolution features, and exploring such differences can facilitate low-resolution feature representation. To this end, we first introduce Neural Discrimination Priors (NDP) to measure the differences and then integrate NDP into the proposed Neural Discrimination-Prompted Attention (NDPA) and Neural Discrimination-Prompted Network (NDPN). The proposed NDPA re-formulates the attention by incorporating NDP to globally perceive useful discrimination information, while the NDPN explores a continuous gating mechanism guided by NDP to selectively permit the passage of beneficial content. To enhance the quality of restored images, we propose a super-resolution-guided reconstruction approach, which is guided by super-resolving low-resolution features to facilitate final UHD image restoration. Experiments show that UHDPromer achieves the best computational efficiency while still maintaining state-of-the-art performance on $3$ UHD image restoration and enhancement tasks, including low-light image enhancement, image dehazing, and image deblurring. The source codes and pre-trained models will be made available at https://github.com/supersupercong/uhdpromer.

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