IRSRMamba: Infrared Image Super-Resolution via Mamba-Based Wavelet Transform Feature Modulation Model
Yongsong Huang, Tomo Miyazaki, Xiaofeng Liu, Shinichiro Omachi
Abstract
Infrared image super-resolution (IRSR) is challenging due to weak structures and textures. While Mamba-based state-space models (SSMs) efficiently model long-range dependencies, their inherent block-wise processing disrupts spatial consistency, limiting direct IRSR applicability. We propose IRSRMamba, a novel Mamba-based framework overcoming this limitation via tailored structural and textural preservation. Integrated into a Mamba backbone, our key innovations are: 1) Wavelet Transform Feature Modulation (WTFM), enhancing multi-scale frequency-aware feature extraction to mitigate block-induced coherence loss; and 2) an SSMs-based Semantic Consistency Loss, enforcing cross-block alignment to restore fragmented context. IRSRMamba achieves superior global-local fusion, structural coherence, and fine-detail preservation. Experiments show state-of-the-art PSNR, SSIM, and perceptual quality on IR benchmarks, as well as robust generalization to remote sensing. This work establishes Mamba-based architectures as highly promising for high-fidelity IR image enhancement. Code is available at https://github.com/yongsongH/IRSRMamba.