DCSAU-Net: A Deeper and More Compact Split-Attention U-Net for Medical Image Segmentation

2 Feb 2022  ·  Qing Xu, Zhicheng Ma, Na He, Wenting Duan ·

Deep learning architecture with convolutional neural network (CNN) achieves outstanding success in the field of computer vision. Where U-Net, an encoder-decoder architecture structured by CNN, makes a great breakthrough in biomedical image segmentation and has been applied in a wide range of practical scenarios. However, the equal design of every downsampling layer in the encoder part and simply stacked convolutions do not allow U-Net to extract sufficient information of features from different depths. The increasing complexity of medical images brings new challenges to the existing methods. In this paper, we propose a deeper and more compact split-attention u-shape network (DCSAU-Net), which efficiently utilises low-level and high-level semantic information based on two novel frameworks: primary feature conservation and compact split-attention block. We evaluate the proposed model on CVC-ClinicDB, 2018 Data Science Bowl, ISIC-2018 and SegPC-2021 datasets. As a result, DCSAU-Net displays better performance than other state-of-the-art (SOTA) methods in terms of the mean Intersection over Union (mIoU) and F1-socre. More significantly, the proposed model demonstrates excellent segmentation performance on challenging images. The code for our work and more technical details can be found at https://github.com/xq141839/DCSAU-Net.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Medical Image Segmentation 2018 Data Science Bowl DCSAU-Net mIoU 0.8501 # 6
Recall 0.9240 # 2
Medical Image Segmentation ISIC2018 U2netme mean Dice 0.905 # 1
Accuracy 0.94216 # 1
Test F1-Score 0.90604 # 1
Precision 0.89502 # 1
Medical Image Segmentation ISIC 2018 DCSAU-Net DSC 90.35 # 1
Lesion Segmentation ISIC 2018 Task 1 DCSAU-Net mIoU 0.8301 # 1
Medical Image Segmentation SegPC-2021 DCSAU-Net mIoU 0.8048 # 1

Methods