Upgraded W-Net with Attention Gates and its Application in Unsupervised 3D Liver Segmentation
November 20, 2020 Β· Declared Dead Β· π International Conference on Pattern Recognition Applications and Methods
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Authors
Dhanunjaya Mitta, Soumick Chatterjee, Oliver Speck, Andreas NΓΌrnberger
arXiv ID
2011.10654
Category
eess.IV: Image & Video Processing
Cross-listed
cs.CV,
cs.LG
Citations
8
Venue
International Conference on Pattern Recognition Applications and Methods
Last Checked
3 months ago
Abstract
Segmentation of biomedical images can assist radiologists to make a better diagnosis and take decisions faster by helping in the detection of abnormalities, such as tumors. Manual or semi-automated segmentation, however, can be a time-consuming task. Most deep learning based automated segmentation methods are supervised and rely on manually segmented ground-truth. A possible solution for the problem would be an unsupervised deep learning based approach for automated segmentation, which this research work tries to address. We use a W-Net architecture and modified it, such that it can be applied to 3D volumes. In addition, to suppress noise in the segmentation we added attention gates to the skip connections. The loss for the segmentation output was calculated using soft N-Cuts and for the reconstruction output using SSIM. Conditional Random Fields were used as a post-processing step to fine-tune the results. The proposed method has shown promising results, with a dice coefficient of 0.88 for the liver segmentation compared against manual segmentation.
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