Spatial-Frequency Dual Progressive Attention Network For Medical Image Segmentation
Zhenhuan Zhou, Along He, Yanlin Wu, Rui Yao, Xueshuo Xie, Tao Li

TL;DR
This paper introduces SF-UNet, a novel dual-domain attention network that enhances medical image segmentation by effectively learning multi-scale, boundary, and frequency features, outperforming existing methods.
Contribution
The paper presents SF-UNet, combining multi-scale progressive channel attention and lightweight frequency-spatial attention to improve feature learning and segmentation accuracy.
Findings
Achieves up to 9.4% DSC improvement over SOTA
Achieves up to 10.78% IOU improvement over SOTA
Validated on three public datasets
Abstract
In medical images, various types of lesions often manifest significant differences in their shape and texture. Accurate medical image segmentation demands deep learning models with robust capabilities in multi-scale and boundary feature learning. However, previous networks still have limitations in addressing the above issues. Firstly, previous networks simultaneously fuse multi-level features or employ deep supervision to enhance multi-scale learning. However, this may lead to feature redundancy and excessive computational overhead, which is not conducive to network training and clinical deployment. Secondly, the majority of medical image segmentation networks exclusively learn features in the spatial domain, disregarding the abundant global information in the frequency domain. This results in a bias towards low-frequency components, neglecting crucial high-frequency information. To…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Image Processing Techniques and Applications · Medical Image Segmentation Techniques
