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Main Authors: Liu, Zhen, Feng, Diedong, Jiang, Hai, Zeng, Liaoyuan, Wang, Hao, Feng, Chaoyu, Lei, Lei, Zeng, Bing, Liu, Shuaicheng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.20364
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author Liu, Zhen
Feng, Diedong
Jiang, Hai
Zeng, Liaoyuan
Wang, Hao
Feng, Chaoyu
Lei, Lei
Zeng, Bing
Liu, Shuaicheng
author_facet Liu, Zhen
Feng, Diedong
Jiang, Hai
Zeng, Liaoyuan
Wang, Hao
Feng, Chaoyu
Lei, Lei
Zeng, Bing
Liu, Shuaicheng
contents RGB-to-RAW reconstruction, or the reverse modeling of a camera Image Signal Processing (ISP) pipeline, aims to recover high-fidelity RAW data from RGB images. Despite notable progress, existing learning-based methods typically treat this task as a direct regression objective and struggle with detail inconsistency and color deviation, due to the ill-posed nature of inverse ISP and the inherent information loss in quantized RGB images. To address these limitations, we pioneer a generative perspective by reformulating RGB-to-RAW reconstruction as a deterministic latent transport problem and introduce a novel framework named RAW-Flow, which leverages flow matching to learn a deterministic vector field in latent space, to effectively bridge the gap between RGB and RAW representations and enable accurate reconstruction of structural details and color information. To further enhance latent transport, we introduce a cross-scale context guidance module that injects hierarchical RGB features into the flow estimation process. Moreover, we design a dual-domain latent autoencoder with a feature alignment constraint to support the proposed latent transport framework, which jointly encodes RGB and RAW inputs while promoting stable training and high-fidelity reconstruction. Extensive experiments demonstrate that RAW-Flow outperforms state-of-the-art approaches both quantitatively and visually.
format Preprint
id arxiv_https___arxiv_org_abs_2601_20364
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle RAW-Flow: Advancing RGB-to-RAW Image Reconstruction with Deterministic Latent Flow Matching
Liu, Zhen
Feng, Diedong
Jiang, Hai
Zeng, Liaoyuan
Wang, Hao
Feng, Chaoyu
Lei, Lei
Zeng, Bing
Liu, Shuaicheng
Computer Vision and Pattern Recognition
RGB-to-RAW reconstruction, or the reverse modeling of a camera Image Signal Processing (ISP) pipeline, aims to recover high-fidelity RAW data from RGB images. Despite notable progress, existing learning-based methods typically treat this task as a direct regression objective and struggle with detail inconsistency and color deviation, due to the ill-posed nature of inverse ISP and the inherent information loss in quantized RGB images. To address these limitations, we pioneer a generative perspective by reformulating RGB-to-RAW reconstruction as a deterministic latent transport problem and introduce a novel framework named RAW-Flow, which leverages flow matching to learn a deterministic vector field in latent space, to effectively bridge the gap between RGB and RAW representations and enable accurate reconstruction of structural details and color information. To further enhance latent transport, we introduce a cross-scale context guidance module that injects hierarchical RGB features into the flow estimation process. Moreover, we design a dual-domain latent autoencoder with a feature alignment constraint to support the proposed latent transport framework, which jointly encodes RGB and RAW inputs while promoting stable training and high-fidelity reconstruction. Extensive experiments demonstrate that RAW-Flow outperforms state-of-the-art approaches both quantitatively and visually.
title RAW-Flow: Advancing RGB-to-RAW Image Reconstruction with Deterministic Latent Flow Matching
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.20364