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Multi-scale convolution based breast cancer image segmentation with attention mechanism in conjunction with war search optimization
Numerous studies have explored different techniques for segmenting breast cancer images, in particular deep learning-based Computer-Aided Diagnosis (CAD) has recently netted attention. However, due to their down-and-out pursuance, the existing approaches like FCN (Fully Convolutional Network), PSPNe...
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Published in: | International journal of computers & applications 2023-05, Vol.45 (5), p.353-366 |
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description | Numerous studies have explored different techniques for segmenting breast cancer images, in particular deep learning-based Computer-Aided Diagnosis (CAD) has recently netted attention. However, due to their down-and-out pursuance, the existing approaches like FCN (Fully Convolutional Network), PSPNet (Pyramid Scene Parsing Network), U-Net, and SegNet still required improvement for offering better semantic segmentation while identifying breast cancer. In this paper, the newly proposed breast cancer tumor segmentation method consists of four steps pre-processing, augmentation, segmenting image using multi-scale convolution and multi- attention mechanisms respectively. The proposed method utilizes the ResNet (Residual Network) backbone network with multi-scale convolution for feature map prediction. Also, the effectiveness of the multi-channel attention module with a pyramid dilated nodule is employed for semantic segmentation. Gated axial, position, and channel attention are combined to create a multi-channel attention mechanism. Additionally, War Search Optimization (WSO) algorithm is being utilized to enhance the accuracy of the segmented images. Experimentations are conducted on two datasets, viz., Breast Cancer Cell Segmentation Database and Breast Cancer Semantic Segmentation (BCSS) Database, with different existing networks. The effectiveness of the network is evaluated based on various criteria in terms of precision, accuracy, recall,
(mean Intersection of Union),
(Intersection of Union), etc. |
doi_str_mv | 10.1080/1206212X.2023.2212945 |
format | article |
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H.</au><au>Polnaya, Ashwin M.</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Multi-scale convolution based breast cancer image segmentation with attention mechanism in conjunction with war search optimization</atitle><jtitle>International journal of computers & applications</jtitle><date>2023-05-04</date><risdate>2023</risdate><volume>45</volume><issue>5</issue><spage>353</spage><epage>366</epage><pages>353-366</pages><issn>1206-212X</issn><eissn>1925-7074</eissn><abstract>Numerous studies have explored different techniques for segmenting breast cancer images, in particular deep learning-based Computer-Aided Diagnosis (CAD) has recently netted attention. However, due to their down-and-out pursuance, the existing approaches like FCN (Fully Convolutional Network), PSPNet (Pyramid Scene Parsing Network), U-Net, and SegNet still required improvement for offering better semantic segmentation while identifying breast cancer. In this paper, the newly proposed breast cancer tumor segmentation method consists of four steps pre-processing, augmentation, segmenting image using multi-scale convolution and multi- attention mechanisms respectively. The proposed method utilizes the ResNet (Residual Network) backbone network with multi-scale convolution for feature map prediction. Also, the effectiveness of the multi-channel attention module with a pyramid dilated nodule is employed for semantic segmentation. Gated axial, position, and channel attention are combined to create a multi-channel attention mechanism. Additionally, War Search Optimization (WSO) algorithm is being utilized to enhance the accuracy of the segmented images. Experimentations are conducted on two datasets, viz., Breast Cancer Cell Segmentation Database and Breast Cancer Semantic Segmentation (BCSS) Database, with different existing networks. The effectiveness of the network is evaluated based on various criteria in terms of precision, accuracy, recall,
(mean Intersection of Union),
(Intersection of Union), etc.</abstract><cop>Calgary</cop><pub>Taylor & Francis</pub><doi>10.1080/1206212X.2023.2212945</doi><tpages>14</tpages></addata></record> |
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subjects | Algorithms attention mechanism Intersection of Union Breast cancer CAI Computer assisted instruction Computer networks Convolution Effectiveness Feature maps Image enhancement Image segmentation Machine learning Medical imaging multi-scale convolution Optimization Semantic segmentation Semantics |
title | Multi-scale convolution based breast cancer image segmentation with attention mechanism in conjunction with war search optimization |
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