Focus U-Net: A novel dual attention-gated CNN for polyp segmentation during colonoscopy
Michael Yeung, Evis Sala, Carola-Bibiane Sch\"onlieb, Leonardo Rundo

TL;DR
The paper introduces Focus U-Net, a dual attention-gated CNN with a novel hybrid loss, achieving state-of-the-art polyp segmentation accuracy during colonoscopy, which can enhance colorectal cancer screening.
Contribution
It presents the Focus U-Net architecture with a Focus Gate and Hybrid Focal loss, improving polyp segmentation performance on multiple datasets.
Findings
Achieved state-of-the-art DSC of 0.941 on CVC-ClinicDB.
Improved mean DSC to 0.878 across five datasets.
Outperformed previous methods by 14-15% in DSC and IoU.
Abstract
Background: Colonoscopy remains the gold-standard screening for colorectal cancer. However, significant miss rates for polyps have been reported, particularly when there are multiple small adenomas. This presents an opportunity to leverage computer-aided systems to support clinicians and reduce the number of polyps missed. Method: In this work we introduce the Focus U-Net, a novel dual attention-gated deep neural network, which combines efficient spatial and channel-based attention into a single Focus Gate module to encourage selective learning of polyp features. The Focus U-Net further incorporates short-range skip connections and deep supervision. Furthermore, we introduce the Hybrid Focal loss, a new compound loss function based on the Focal loss and Focal Tversky loss, to handle class-imbalanced image segmentation. For our experiments, we selected five public datasets containing…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Focal Loss · Concatenated Skip Connection · Convolution · Max Pooling · U-Net
