Abstract

Medical image segmentation is a crucial task in computer-aided diagnosis. While deep learning has significantly improved this field, relying solely on local computing power makes it challenging to achieve real-time segmentation results. Furthermore, traditional convolutional neural networks (CNNs) lack the ability to extract global features. To address these issues, this paper proposes a cloud-based medical image segmentation method that leverages multi-feature extraction and interactive fusion. Specifically, this method employs cloud computing to process a large number of medical images and overcome local computing power limitations. It also combines Transformer and CNNs to extract global and local features, respectively, and introduces an interactive fusion attention module to improve segmentation accuracy. The proposed approach is validated on multiple medical image datasets, and experimental results demonstrate its effectiveness and progress.

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