Brain Medical Image Fusion Based on Dual-Branch CNNs in NSST Domain

Computed tomography (CT) images show structural features, while magnetic resonance imaging (MRI) images represent brain tissue anatomy but do not contain any functional information. How to effectively combine the images of the two modes has become a research challenge. In this paper, a new framework...

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Main Authors: Zhaisheng Ding, Dongming Zhou, Rencan Nie, Ruichao Hou, Yanyu Liu
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:BioMed Research International
Online Access:http://dx.doi.org/10.1155/2020/6265708
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spelling doaj-45a3339eff184b96b2a65d6d8f441ce92020-11-25T02:41:30ZengHindawi LimitedBioMed Research International2314-61332314-61412020-01-01202010.1155/2020/62657086265708Brain Medical Image Fusion Based on Dual-Branch CNNs in NSST DomainZhaisheng Ding0Dongming Zhou1Rencan Nie2Ruichao Hou3Yanyu Liu4School of Information, Yunnan University, Kunming 650504, ChinaSchool of Information, Yunnan University, Kunming 650504, ChinaSchool of Information, Yunnan University, Kunming 650504, ChinaSchool of Information, Yunnan University, Kunming 650504, ChinaSchool of Information, Yunnan University, Kunming 650504, ChinaComputed tomography (CT) images show structural features, while magnetic resonance imaging (MRI) images represent brain tissue anatomy but do not contain any functional information. How to effectively combine the images of the two modes has become a research challenge. In this paper, a new framework for medical image fusion is proposed which combines convolutional neural networks (CNNs) and non-subsampled shearlet transform (NSST) to simultaneously cover the advantages of them both. This method effectively retains the functional information of the CT image and reduces the loss of brain structure information and spatial distortion of the MRI image. In our fusion framework, the initial weights integrate the pixel activity information from two source images that is generated by a dual-branch convolutional network and is decomposed by NSST. Firstly, the NSST is performed on the source images and the initial weights to obtain their low-frequency and high-frequency coefficients. Then, the first component of the low-frequency coefficients is fused by a novel fusion strategy, which simultaneously copes with two key issues in the fusion processing which are named energy conservation and detail extraction. The second component of the low-frequency coefficients is fused by the strategy that is designed according to the spatial frequency of the weight map. Moreover, the high-frequency coefficients are fused by the high-frequency components of the initial weight. Finally, the final image is reconstructed by the inverse NSST. The effectiveness of the proposed method is verified using pairs of multimodality images, and the sufficient experiments indicate that our method performs well especially for medical image fusion.http://dx.doi.org/10.1155/2020/6265708
collection DOAJ
language English
format Article
sources DOAJ
author Zhaisheng Ding
Dongming Zhou
Rencan Nie
Ruichao Hou
Yanyu Liu
spellingShingle Zhaisheng Ding
Dongming Zhou
Rencan Nie
Ruichao Hou
Yanyu Liu
Brain Medical Image Fusion Based on Dual-Branch CNNs in NSST Domain
BioMed Research International
author_facet Zhaisheng Ding
Dongming Zhou
Rencan Nie
Ruichao Hou
Yanyu Liu
author_sort Zhaisheng Ding
title Brain Medical Image Fusion Based on Dual-Branch CNNs in NSST Domain
title_short Brain Medical Image Fusion Based on Dual-Branch CNNs in NSST Domain
title_full Brain Medical Image Fusion Based on Dual-Branch CNNs in NSST Domain
title_fullStr Brain Medical Image Fusion Based on Dual-Branch CNNs in NSST Domain
title_full_unstemmed Brain Medical Image Fusion Based on Dual-Branch CNNs in NSST Domain
title_sort brain medical image fusion based on dual-branch cnns in nsst domain
publisher Hindawi Limited
series BioMed Research International
issn 2314-6133
2314-6141
publishDate 2020-01-01
description Computed tomography (CT) images show structural features, while magnetic resonance imaging (MRI) images represent brain tissue anatomy but do not contain any functional information. How to effectively combine the images of the two modes has become a research challenge. In this paper, a new framework for medical image fusion is proposed which combines convolutional neural networks (CNNs) and non-subsampled shearlet transform (NSST) to simultaneously cover the advantages of them both. This method effectively retains the functional information of the CT image and reduces the loss of brain structure information and spatial distortion of the MRI image. In our fusion framework, the initial weights integrate the pixel activity information from two source images that is generated by a dual-branch convolutional network and is decomposed by NSST. Firstly, the NSST is performed on the source images and the initial weights to obtain their low-frequency and high-frequency coefficients. Then, the first component of the low-frequency coefficients is fused by a novel fusion strategy, which simultaneously copes with two key issues in the fusion processing which are named energy conservation and detail extraction. The second component of the low-frequency coefficients is fused by the strategy that is designed according to the spatial frequency of the weight map. Moreover, the high-frequency coefficients are fused by the high-frequency components of the initial weight. Finally, the final image is reconstructed by the inverse NSST. The effectiveness of the proposed method is verified using pairs of multimodality images, and the sufficient experiments indicate that our method performs well especially for medical image fusion.
url http://dx.doi.org/10.1155/2020/6265708
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AT dongmingzhou brainmedicalimagefusionbasedondualbranchcnnsinnsstdomain
AT rencannie brainmedicalimagefusionbasedondualbranchcnnsinnsstdomain
AT ruichaohou brainmedicalimagefusionbasedondualbranchcnnsinnsstdomain
AT yanyuliu brainmedicalimagefusionbasedondualbranchcnnsinnsstdomain
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