论文标题

图像denoising的致密残差变压器

Dense residual Transformer for image denoising

论文作者

Yao, Chao, Jin, Shuo, Liu, Meiqin, Ban, Xiaojuan

论文摘要

图像DeNoising是一项重要的低级计算机视觉任务,旨在从嘈杂的图像中重建无噪声和高质量的图像。随着深度学习的发展,卷积神经网络(CNN)已逐渐应用并取得了巨大的成功,在图像DeNoising,图像压缩,图像增强等方面取得了巨大的成功。最近,变压器是一种热门技术,该技术被广泛用于处理计算机视觉任务。但是,对于低级视力任务,很少提出基于变压器的方法。在本文中,我们提出了一个基于变压器的图像降级网络结构,该结构被称为密度符号。密度图由三个模块组成,包括预处理模块,局部全球特征提取模块和一个重建模块。具体而言,局部全球特征提取模块由几个Sformer组组成,每个组都有几个Etransformer层和一个卷积层以及残留的连接。这些sformer基团密集地跳过以融合不同层的特征,它们从给定的嘈杂图像共同捕获局部和全局信息。我们对综合实验进行模型。实验结果证明,在客观和主观评估中,与某些最新方法相比,我们的敏感器与某些最新方法相比,在合成噪声数据和真实噪声数据方面取得了进步。

Image denoising is an important low-level computer vision task, which aims to reconstruct a noise-free and high-quality image from a noisy image. With the development of deep learning, convolutional neural network (CNN) has been gradually applied and achieved great success in image denoising, image compression, image enhancement, etc. Recently, Transformer has been a hot technique, which is widely used to tackle computer vision tasks. However, few Transformer-based methods have been proposed for low-level vision tasks. In this paper, we proposed an image denoising network structure based on Transformer, which is named DenSformer. DenSformer consists of three modules, including a preprocessing module, a local-global feature extraction module, and a reconstruction module. Specifically, the local-global feature extraction module consists of several Sformer groups, each of which has several ETransformer layers and a convolution layer, together with a residual connection. These Sformer groups are densely skip-connected to fuse the feature of different layers, and they jointly capture the local and global information from the given noisy images. We conduct our model on comprehensive experiments. Experimental results prove that our DenSformer achieves improvement compared to some state-of-the-art methods, both for the synthetic noise data and real noise data, in the objective and subjective evaluations.

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