2019
DOI: 10.1109/access.2019.2914873
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Attention Dense-U-Net for Automatic Breast Mass Segmentation in Digital Mammogram

Abstract: Breast mass is one of the most distinctive signs for the diagnosis of breast cancer, and the accurate segmentation of masses is critical for improving the accuracy of breast cancer detection and reducing the mortality rate. It is time-consuming for a physician to review the film. Besides, traditional medical segmentation techniques often require prior knowledge or manual extraction of features, which often lead to a subjective diagnosis. Therefore, developing an automatic image segmentation method is important… Show more

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Cited by 143 publications
(92 citation statements)
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“…To segment and quantify the epicardial fat precisely, here, we propose a novel method based on the U-Net framework, applying dual U-Nets with a morphological layer on cardiac CT scans. The U-Net is a popular framework for deep learning models, it often obtains ideal performance in image segmentation, especially in the area of medical image processing [25][26][27][28]. The whole pipeline of our proposed method is shown in Fig.…”
Section: Introductionmentioning
confidence: 99%
“…To segment and quantify the epicardial fat precisely, here, we propose a novel method based on the U-Net framework, applying dual U-Nets with a morphological layer on cardiac CT scans. The U-Net is a popular framework for deep learning models, it often obtains ideal performance in image segmentation, especially in the area of medical image processing [25][26][27][28]. The whole pipeline of our proposed method is shown in Fig.…”
Section: Introductionmentioning
confidence: 99%
“…Therefore, direct comparisons are not sufficient. Our adopted dataset is the same as the works of Li et al ( 2019 ), Wang et al ( 2019 ), Singh et al ( 2020 ). The author of Li et al ( 2019 ) proposed Dense U-Net algorithm that is not a traditional algorithm like DenseNet or U-Net.…”
Section: Results and Interpretationmentioning
confidence: 99%
“…Attention mechanism is widely adopted and has shown significant performance improvement in various deep learningbased computer vision applications [25], [26], [41]- [47]. In vision tasks, attention mechanism first computes the attention weights that represent the degree of importance of features, and then extracts more informative features from the input feature maps by using the weight values.…”
Section: B Attention Mechanismmentioning
confidence: 99%