2023
DOI: 10.3390/s23208589
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Improved UNet with Attention for Medical Image Segmentation

Ahmed AL Qurri,
Mohamed Almekkawy

Abstract: Medical image segmentation is crucial for medical image processing and the development of computer-aided diagnostics. In recent years, deep Convolutional Neural Networks (CNNs) have been widely adopted for medical image segmentation and have achieved significant success. UNet, which is based on CNNs, is the mainstream method used for medical image segmentation. However, its performance suffers owing to its inability to capture long-range dependencies. Transformers were initially designed for Natural Language P… Show more

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Cited by 20 publications
(11 citation statements)
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“…First, there is room for improvement in restoring edge details. In future studies, we can enhance the performance of the model by integrating novel techniques, such as attention mechanisms [39,40], into our approach. Secondly, although our model is unsupervised, it still requires the support of non-truncated data with similar features.…”
Section: Discussionmentioning
confidence: 99%
“…First, there is room for improvement in restoring edge details. In future studies, we can enhance the performance of the model by integrating novel techniques, such as attention mechanisms [39,40], into our approach. Secondly, although our model is unsupervised, it still requires the support of non-truncated data with similar features.…”
Section: Discussionmentioning
confidence: 99%
“…Proposed by Xu et al (2021) for classifying COVID-19 positive cases from chest X-ray images, the MANet architecture incorporates attention mechanisms to enhance network capabilities and performance. The attention block directs the model’s focus towards critical areas of the input image, ensuring that irrelevant features do not interfere with the training process—an essential capability for medical image analysis ( Al Qurri and Almekkawy, 2023 ).…”
Section: Proposed Methodsmentioning
confidence: 99%
“…Constrained by the traditional algorithm design difficulties, whereby it is difficult to ensure real-time target segmentation in the complex background of poor results and other issues, researchers have begun to choose to use deep learning-based image semantic segmentation methods to build segmentation models to complete the target segmentation task. Currently, the design of segmentation models based on the encoder–decoder structure of a full convolutional neural network FCN [ 9 ] is quite extensive, among which, due to the relatively simple structure of the U-Net [ 10 ] model and its outstanding segmentation performance, it and its variants have now achieved remarkable results in the semantic segmentation tasks of images such as medicine [ 11 ], traffic [ 12 ], agriculture [ 13 ], aerial photography [ 14 ], remote sensing [ 15 ], and so on. O. Oktay et al [ 16 ] proposed a novel Attention Gate (AG) model for the medical image domain, which can automatically learn to focus on target structures of different shapes and sizes, and integrated it into the U-Net network architecture to build the Attention U-Net network, which reduces the computational overheads of the original U-Net model, and improves the model’s sensitivity and computational accuracy.…”
Section: Related Workmentioning
confidence: 99%