Multiscale Feature Attention Module Based Pyramid Network for Medical Digital Radiography Image Enhancement

Medical digital radiography (DR) is widely used in the clinical application. To deal with the problems of noise, edge blur, low contrast in DR images, we propose a multiscale feature attention module based pyramid enhancement network by training image blocks. The network is in the framework of a sim...

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Main Authors: Wenjing Xue, Yingmei Wang, Zhien Qin
Format: Article
Language:English
Published: IEEE 2024-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10496689/
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author Wenjing Xue
Yingmei Wang
Zhien Qin
author_facet Wenjing Xue
Yingmei Wang
Zhien Qin
author_sort Wenjing Xue
collection DOAJ
description Medical digital radiography (DR) is widely used in the clinical application. To deal with the problems of noise, edge blur, low contrast in DR images, we propose a multiscale feature attention module based pyramid enhancement network by training image blocks. The network is in the framework of a simplified U-Net, which reduces the computational load by reducing the convolution layer, and adopts Laplacian pyramid connection instead of concatenation operation to preserve the image boundary information. In addition, we embed a simple multiscale feature attention (SMFA) module between the encoder and decoder, which integrates the feature information of different scales precisely and makes the network have a stronger ability to perceive the local feature information. Our proposed algorithm is a network realization of Gauss-Laplacian pyramid decomposition with an attention module. Furthermore, we design a side feature loss function combined with mean square loss and absolute loss. We adopt batch normalization between convolution and activation operations to ensure information of all gray scale regions to be considered, which enhances the robustness of the network. We use LeakyReLu activation function and Sigmoid function in the previous layers and in the output layers respectively to preserve the negative information of multiscale details and to keep the gray scale region of the output images. Experiments with real data of different parts of human body validate the effectiveness of our algorithm, which shows that our proposed algorithm performs well on contrast enhancement, structure details preservation, and noise suppression. It has certain value of clinical application.
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spelling doaj.art-40e489d16ff24a1a9f5920d9c7f962072024-04-18T23:00:52ZengIEEEIEEE Access2169-35362024-01-0112536865369710.1109/ACCESS.2024.338741310496689Multiscale Feature Attention Module Based Pyramid Network for Medical Digital Radiography Image EnhancementWenjing Xue0Yingmei Wang1https://orcid.org/0000-0002-3535-2845Zhien Qin2https://orcid.org/0009-0005-7840-2709School of Mathematics and Statistics, Shandong University of Technology, Zibo, ChinaSchool of Mathematics and Statistics, Shandong University of Technology, Zibo, ChinaShinva Medical Instrument Company Ltd., Zibo, ChinaMedical digital radiography (DR) is widely used in the clinical application. To deal with the problems of noise, edge blur, low contrast in DR images, we propose a multiscale feature attention module based pyramid enhancement network by training image blocks. The network is in the framework of a simplified U-Net, which reduces the computational load by reducing the convolution layer, and adopts Laplacian pyramid connection instead of concatenation operation to preserve the image boundary information. In addition, we embed a simple multiscale feature attention (SMFA) module between the encoder and decoder, which integrates the feature information of different scales precisely and makes the network have a stronger ability to perceive the local feature information. Our proposed algorithm is a network realization of Gauss-Laplacian pyramid decomposition with an attention module. Furthermore, we design a side feature loss function combined with mean square loss and absolute loss. We adopt batch normalization between convolution and activation operations to ensure information of all gray scale regions to be considered, which enhances the robustness of the network. We use LeakyReLu activation function and Sigmoid function in the previous layers and in the output layers respectively to preserve the negative information of multiscale details and to keep the gray scale region of the output images. Experiments with real data of different parts of human body validate the effectiveness of our algorithm, which shows that our proposed algorithm performs well on contrast enhancement, structure details preservation, and noise suppression. It has certain value of clinical application.https://ieeexplore.ieee.org/document/10496689/Medical DR image enhancementmultiscale features extractionU-Netpyramid network
spellingShingle Wenjing Xue
Yingmei Wang
Zhien Qin
Multiscale Feature Attention Module Based Pyramid Network for Medical Digital Radiography Image Enhancement
IEEE Access
Medical DR image enhancement
multiscale features extraction
U-Net
pyramid network
title Multiscale Feature Attention Module Based Pyramid Network for Medical Digital Radiography Image Enhancement
title_full Multiscale Feature Attention Module Based Pyramid Network for Medical Digital Radiography Image Enhancement
title_fullStr Multiscale Feature Attention Module Based Pyramid Network for Medical Digital Radiography Image Enhancement
title_full_unstemmed Multiscale Feature Attention Module Based Pyramid Network for Medical Digital Radiography Image Enhancement
title_short Multiscale Feature Attention Module Based Pyramid Network for Medical Digital Radiography Image Enhancement
title_sort multiscale feature attention module based pyramid network for medical digital radiography image enhancement
topic Medical DR image enhancement
multiscale features extraction
U-Net
pyramid network
url https://ieeexplore.ieee.org/document/10496689/
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AT yingmeiwang multiscalefeatureattentionmodulebasedpyramidnetworkformedicaldigitalradiographyimageenhancement
AT zhienqin multiscalefeatureattentionmodulebasedpyramidnetworkformedicaldigitalradiographyimageenhancement