Channel-Specific and Spatial Residual Attention Network for Medical Image Denoising.

Jianhua Hu, Woqing Huang, Haoxian Zhang, Zhanjiang Yuan, Xiangfei Feng, Weimei Wu
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Abstract

Medical image quality is crucial for physicians to ensure accurate diagnosis and therapeutic strategies. However, due to the interference of noise, there are often various types of noise and artifacts in medical images. This not only damages the visual clarity of images, but also reduces the accuracy of information extraction. Considering that the edges of medical images are rich in high-frequency information, to enhance the quality of medical images, a dual attention mechanism, the channel-specific and spatial residual attention network (CSRAN) in the U-Net framework is proposed. The CSRAN seamlessly integrates the U-Net architecture with channel-wise and spatial feature attention (CSAR) modules, as well as low-frequency channel attention modules. Combined with the two modules, the ability of medical image processing to extract high-frequency features is improved, thereby significantly improving the edge effects and clarity of reconstructed images. This model can present better performance in capturing high-frequency information and spatial structures in medical image denoising and super-resolution reconstruction tasks. It cannot only enhance the ability to extract high-frequency features and strengthen its nonlinear representation capability, but also endow strong edge detection capabilities of the model. The experimental results further prove the superiority of CSRAN in medical image denoising and super-resolution reconstruction tasks.

用于医学图像去噪的特定通道和空间残留注意力网络
医疗图像质量对医生确保准确诊断和治疗策略至关重要。然而,由于噪声的干扰,医学图像中经常会出现各种类型的噪声和伪影。这不仅会破坏图像的视觉清晰度,还会降低信息提取的准确性。考虑到医学图像的边缘含有丰富的高频信息,为了提高医学图像的质量,本文提出了一种双重注意机制,即 U-Net 框架下的特定通道和空间残差注意网络(CSRAN)。CSRAN 将 U-Net 架构与信道和空间特征注意(CSAR)模块以及低频信道注意模块无缝集成。这两个模块的结合提高了医学图像处理提取高频特征的能力,从而显著改善了边缘效应和重建图像的清晰度。该模型能在医学图像去噪和超分辨率重建任务中更好地捕捉高频信息和空间结构。它不仅提高了提取高频特征的能力,增强了非线性表示能力,还赋予了模型强大的边缘检测能力。实验结果进一步证明了 CSRAN 在医学图像去噪和超分辨率重建任务中的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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