Learning Arbitrary-Scale RAW Image Downscaling with Wavelet-based Recurrent Reconstruction
Learning Arbitrary-Scale RAW Image Downscaling with Wavelet-based Recurrent Reconstruction
Image downscaling is critical for efficient storage and transmission of high-resolution (HR) images. Existing learning-based methods focus on performing downscaling within the sRGB domain, which typically suffers from blurred details and unexpected artifacts. RAW images, with their unprocessed photonic information, offer greater flexibility but lack specialized downscaling frameworks. In this paper, we propose a wavelet-based recurrent reconstruction framework that leverages the information lossless attribute of wavelet transformation to fulfill the arbitrary-scale RAW image downscaling in a coarse-to-fine manner, in which the Low-Frequency Arbitrary-Scale Downscaling Module (LASDM) and the High-Frequency Prediction Module (HFPM) are proposed to preserve structural and textural integrity of the reconstructed low-resolution (LR) RAW images, alongside an energy-maximization loss to align high-frequency energy between HR and LR domain. Furthermore, we introduce the Realistic Non-Integer RAW Downscaling (Real-NIRD) dataset, featuring a non-integer downscaling factor of 1.3$\times$, and incorporate it with publicly available datasets with integer factors (2$\times$, 3$\times$, 4$\times$) for comprehensive benchmarking arbitrary-scale image downscaling purposes. Extensive experiments demonstrate that our method outperforms existing state-of-the-art competitors both quantitatively and visually. The code and dataset will be released at https://github.com/RenYangSCU/ASRD.
Yang Ren、Hai Jiang、Wei Li、Menglong Yang、Heng Zhang、Zehua Sheng、Qingsheng Ye、Shuaicheng Liu
光电子技术半导体技术计算技术、计算机技术通信无线通信
Yang Ren,Hai Jiang,Wei Li,Menglong Yang,Heng Zhang,Zehua Sheng,Qingsheng Ye,Shuaicheng Liu.Learning Arbitrary-Scale RAW Image Downscaling with Wavelet-based Recurrent Reconstruction[EB/OL].(2025-07-31)[2025-08-07].https://arxiv.org/abs/2507.23219.点此复制
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