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A trusted medical image super-resolution method based on feedback adaptive weighted dense network

机译:基于反馈自适应加权密度密度网络的可信医学图像超分辨率方法

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摘要

High-resolution (HR) medical images are preferred in clinical diagnoses and subsequent analysis. However, the acquisition of HR medical images is easily affected by hardware devices. As an effective and trusted alternative method, the super-resolution (SR) technology is introduced to improve the image resolution. Compared with traditional SR methods, the deep learning-based SR methods can obtain more clear and trusted HR images. In this paper, we propose a trusted deep convolutional neural network-based SR method named feedback adaptive weighted dense network (FAWDN) for HR medical image reconstruction. Specifically, the proposed FAWDN can transmit the information of the output image to the low-level features by a feedback connection. To explore advanced feature representation and reduce the feature redundancy in dense blocks, an adaptive weighted dense block (AWDB) is introduced to adaptively select the informative features. Experimental results demonstrate that our FAWDN outperforms the state-of-the-art image SR methods and can obtain more clear and trusted medical images than comparative methods.
机译:在临床诊断和随后的分析中,高分辨率(HR)医学图像是优选的。然而,收购HR医学图像容易受硬件设备的影响。作为一种有效且可信赖的替代方法,引入超分辨率(SR)技术以改善图像分辨率。与传统的SR方法相比,基于深度学习的SR方法可以获得更明确和信任的HR图像。在本文中,我们提出了一种名为HR医学图像重建的反馈自适应加权密度致密网络(FAWDN)的信任的深度卷积神经网络的SR方法。具体地,所提出的FAWDN可以通过反馈连接将输出图像的信息发送到低级特征。为了探索高级特征表示并减少密集块中的特征冗余,引入自适应加权密度块(AWDB)以自适应地选择信息特征。实验结果表明,我们的FAWDN优于最先进的图像SR方法,并且可以比比较方法获得更清晰可信的医学图像。

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