论文标题
雷声:基于缩略图的快速轻量级图像Denoising网络
Thunder: Thumbnail based Fast Lightweight Image Denoising Network
论文作者
论文摘要
为了在消除现实世界图像中的噪声方面取得令人鼓舞的结果,大多数现有的DeNoising网络都是通过复杂的网络结构制定的,使其在部署中不切实际。一些尝试着重于减少过滤器和功能渠道的数量,但遭受了大量性能损失,并且更实用,更轻巧的Denoising网络具有快速的推理速度。 为此,提出并实施了基于\ textbf {n} ail \ textbf {d} \ textbf {具体而言,Thunder模型包含两个新建立的模块: (1)一个基于小波的缩略图子空间编码器(TSE),可以利用子带相关性提供基于低频功能的近似缩略图; (2)基于子空间投影的改进模块(SPR),可以根据子空间投影方法逐步恢复缩略图的详细信息。 与复杂设计相比,在两个现实世界中的基准测试基准上进行了广泛的实验,表明拟议中的雷霆队优于现有的轻质模型,并在PSNR和SSIM上实现了竞争性能。
To achieve promising results on removing noise from real-world images, most of existing denoising networks are formulated with complex network structure, making them impractical for deployment. Some attempts focused on reducing the number of filters and feature channels but suffered from large performance loss, and a more practical and lightweight denoising network with fast inference speed is of high demand. To this end, a \textbf{Thu}mb\textbf{n}ail based \textbf{D}\textbf{e}noising Netwo\textbf{r}k dubbed Thunder, is proposed and implemented as a lightweight structure for fast restoration without comprising the denoising capabilities. Specifically, the Thunder model contains two newly-established modules: (1) a wavelet-based Thumbnail Subspace Encoder (TSE) which can leverage sub-bands correlation to provide an approximate thumbnail based on the low-frequent feature; (2) a Subspace Projection based Refine Module (SPR) which can restore the details for thumbnail progressively based on the subspace projection approach. Extensive experiments have been carried out on two real-world denoising benchmarks, demonstrating that the proposed Thunder outperforms the existing lightweight models and achieves competitive performance on PSNR and SSIM when compared with the complex designs.