RAWMamba: Unified sRGB-to-RAW De-rendering With State Space Model
- URL: http://arxiv.org/abs/2411.11717v1
- Date: Mon, 18 Nov 2024 16:45:44 GMT
- Title: RAWMamba: Unified sRGB-to-RAW De-rendering With State Space Model
- Authors: Hongjun Chen, Wencheng Han, Huan Zheng, Jianbing Shen,
- Abstract summary: We propose RAWMamba, a Mamba-based unified framework for sRGB-to-RAW de-rendering.
The core of RAWMamba is the Unified Metadata Embedding (UME) module, which harmonizes diverse metadata types into a unified representation.
The Local Tone-Aware Mamba module captures long-range dependencies to enable effective global propagation of metadata.
- Score: 52.250939617273744
- License:
- Abstract: Recent advancements in sRGB-to-RAW de-rendering have increasingly emphasized metadata-driven approaches to reconstruct RAW data from sRGB images, supplemented by partial RAW information. In image-based de-rendering, metadata is commonly obtained through sampling, whereas in video tasks, it is typically derived from the initial frame. The distinct metadata requirements necessitate specialized network architectures, leading to architectural incompatibilities that increase deployment complexity. In this paper, we propose RAWMamba, a Mamba-based unified framework developed for sRGB-to-RAW de-rendering across both image and video domains. The core of RAWMamba is the Unified Metadata Embedding (UME) module, which harmonizes diverse metadata types into a unified representation. In detail, a multi-perspective affinity modeling method is proposed to promote the extraction of reference information. In addition, we introduce the Local Tone-Aware Mamba (LTA-Mamba) module, which captures long-range dependencies to enable effective global propagation of metadata. Experimental results demonstrate that the proposed RAWMamba achieves state-of-the-art performance, yielding high-quality RAW data reconstruction.
Related papers
- RAW-Diffusion: RGB-Guided Diffusion Models for High-Fidelity RAW Image Generation [4.625376287612609]
We propose a novel diffusion-based method for generating RAW images guided by RGB images.
This approach yields high-fidelity RAW images, enabling the creation of camera-specific RAW datasets.
We extend our method to create BDD100K-RAW and Cityscapes-RAW datasets, revealing its effectiveness for object detection in RAW imagery.
arXiv Detail & Related papers (2024-11-20T09:40:12Z) - Unveiling Hidden Details: A RAW Data-Enhanced Paradigm for Real-World Super-Resolution [56.98910228239627]
Real-world image super-resolution (Real SR) aims to generate high-fidelity, detail-rich high-resolution (HR) images from low-resolution (LR) counterparts.
Existing Real SR methods primarily focus on generating details from the LR RGB domain, often leading to a lack of richness or fidelity in fine details.
We pioneer the use of details hidden in RAW data to complement existing RGB-only methods, yielding superior outputs.
arXiv Detail & Related papers (2024-11-16T13:29:50Z) - A Learnable Color Correction Matrix for RAW Reconstruction [19.394856071610604]
We introduce a learnable color correction matrix (CCM) to approximate the complex inverse image signal processor (ISP)
Experimental results demonstrate that simulated RAW (simRAW) images generated by our method provide performance improvements equivalent to those produced by more complex inverse ISP methods.
arXiv Detail & Related papers (2024-09-04T07:46:42Z) - Beyond Learned Metadata-based Raw Image Reconstruction [86.1667769209103]
Raw images have distinct advantages over sRGB images, e.g., linearity and fine-grained quantization levels.
They are not widely adopted by general users due to their substantial storage requirements.
We propose a novel framework that learns a compact representation in the latent space, serving as metadata.
arXiv Detail & Related papers (2023-06-21T06:59:07Z) - Raw Image Reconstruction with Learned Compact Metadata [61.62454853089346]
We propose a novel framework to learn a compact representation in the latent space serving as the metadata in an end-to-end manner.
We show how the proposed raw image compression scheme can adaptively allocate more bits to image regions that are important from a global perspective.
arXiv Detail & Related papers (2023-02-25T05:29:45Z) - Towards Low Light Enhancement with RAW Images [101.35754364753409]
We make the first benchmark effort to elaborate on the superiority of using RAW images in the low light enhancement.
We develop a new evaluation framework, Factorized Enhancement Model (FEM), which decomposes the properties of RAW images into measurable factors.
A RAW-guiding Exposure Enhancement Network (REENet) is developed, which makes trade-offs between the advantages and inaccessibility of RAW images in real applications.
arXiv Detail & Related papers (2021-12-28T07:27:51Z) - Deep Burst Super-Resolution [165.90445859851448]
We propose a novel architecture for the burst super-resolution task.
Our network takes multiple noisy RAW images as input, and generates a denoised, super-resolved RGB image as output.
In order to enable training and evaluation on real-world data, we additionally introduce the BurstSR dataset.
arXiv Detail & Related papers (2021-01-26T18:57:21Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.