CVMay 11, 2025

High-Frequency Prior-Driven Adaptive Masking for Accelerating Image Super-Resolution

arXiv:2505.06975v1h-index: 26Has Code
Originality Incremental advance
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This addresses the problem of computational efficiency in image super-resolution for applications requiring real-time or resource-constrained processing, representing an incremental improvement through adaptive masking.

The paper tackles the challenge of accelerating image super-resolution by reducing computation without sacrificing performance, achieving a 24-43% reduction in FLOPs for state-of-the-art models while maintaining or improving quantitative metrics.

The primary challenge in accelerating image super-resolution lies in reducing computation while maintaining performance and adaptability. Motivated by the observation that high-frequency regions (e.g., edges and textures) are most critical for reconstruction, we propose a training-free adaptive masking module for acceleration that dynamically focuses computation on these challenging areas. Specifically, our method first extracts high-frequency components via Gaussian blur subtraction and adaptively generates binary masks using K-means clustering to identify regions requiring intensive processing. Our method can be easily integrated with both CNNs and Transformers. For CNN-based architectures, we replace standard $3 \times 3$ convolutions with an unfold operation followed by $1 \times 1$ convolutions, enabling pixel-wise sparse computation guided by the mask. For Transformer-based models, we partition the mask into non-overlapping windows and selectively process tokens based on their average values. During inference, unnecessary pixels or windows are pruned, significantly reducing computation. Moreover, our method supports dilation-based mask adjustment to control the processing scope without retraining, and is robust to unseen degradations (e.g., noise, compression). Extensive experiments on benchmarks demonstrate that our method reduces FLOPs by 24--43% for state-of-the-art models (e.g., CARN, SwinIR) while achieving comparable or better quantitative metrics. The source code is available at https://github.com/shangwei5/AMSR

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