摘要
Practical low-light denoising/enhancement solutions often require fast computation, high memory efficiency, and can achieve visually high-quality restoration results. Most existing methods aim to restore quality but compromise on speed and memory requirements, which limits their usefulness to a large extent. This paper proposes a new deep denoising architecture, a re-parameterized multi-scale fusion network for extreme low-light raw denoising, which greatly improves the inference speed without losing high-quality denoising performance. Specifically, image features are extracted in multi-scale space, and a lightweight spatialchannel parallel attention module is used to focus on core features within space and channel dynamically and adaptively. The representation ability of the model is further enriched by re-parameterized convolutional unit without increasing computational cost at inference. The proposed model can restore UHD 4K resolution images within about 1 s on a CPU(e. g., Intel i7-7700K) and run at 24 fps on a GPU(e. g., NVIDIA GTX 1080Ti), which is almost four times faster than existing advanced methods(e. g., UNet) while still maintaining competitive restoration quality.
| 投稿的翻译标题 | Re-parameterized Multi-scale Fusion Network for Efficient Extreme Low-light Raw Denoising |
|---|---|
| 源语言 | 繁体中文 |
| 页(从-至) | 120-126 |
| 页数 | 7 |
| 期刊 | Computer Science |
| 卷 | 49 |
| 期 | 8 |
| DOI | |
| 出版状态 | 已出版 - 15 8月 2022 |
| 已对外发布 | 是 |
关键词
- Extreme lowlight denoising
- Multi-scale fusion
- Re-parameterization convolutional unit
- Spatial-channel parallel attention module
指纹
探究 '基于重参数化多尺度融合网络的高效极暗光原始图像降噪' 的科研主题。它们共同构成独一无二的指纹。引用此
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