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Mutimodal Mutual Attention Network
- Citation Author(s):
- Submitted by:
- Wang Zhibing
- Last updated:
- Fri, 06/09/2023 - 19:57
- DOI:
- 10.21227/7sxh-vw94
- License:
- Categories:
- Keywords:
Abstract
— Medical image segmentation is a crucial aspect of medical image processing, and has been widely used in the detection and clinical diagnosis for brain, lung, liver, heart and other diseases. In this paper, we propose a novel multimodal mutual attention network, called MMAUNet, for medical image segmentation. MMA-UNet is divided into two parts. The first part obtains more highdimensional features by skip connection and improved network structure. The second part incorporates a multimodal mutual attention mechanism, encompassing feature mutual attention, spatial mutual attention, and channel mutual attention. This mechanism facilitates the effective fusion of high-dimensional and low-dimensional features, leading to enhanced context information. Experimental results on Kagglelung dataset, Liver dataset, Cell dataset, Drive dataset and Kvasir-SEG dataset show that MMA-UNet has achieved better segmentation performance than that of other baseline methods, on lung, liver, cell contour, retinal vessel and polyps, etc.
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Dataset Files
- Frame drawing and structure drawing using PPT; Using pytorch, the Learning curves are drawn based on the data that the code runs dataset pictures.zip (1.07 MB)
- Part of the program runs predictive data and plots Part of the program runs predictive data and plots.zip (11.02 MB)
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