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KDAS: Knowledge Distillation via Attention Supervision Framework for Polyp Segmentation
Quoc-Huy Trinh; Minh-Van Nguyen; Phuoc-Thao Vo Thi

Abstract
Polyp segmentation, a contentious issue in medical imaging, has seen numerous proposed methods aimed at improving the quality of segmented masks. While current state-of-the-art techniques yield impressive results, the size and computational cost of these models create challenges for practical industry applications. To address this challenge, we present KDAS, a Knowledge Distillation framework that incorporates attention supervision, and our proposed Symmetrical Guiding Module. This framework is designed to facilitate a compact student model with fewer parameters, allowing it to learn the strengths of the teacher model and mitigate the inconsistency between teacher features and student features, a common challenge in Knowledge Distillation, via the Symmetrical Guiding Module. Through extensive experiments, our compact models demonstrate their strength by achieving competitive results with state-of-the-art methods, offering a promising approach to creating compact models with high accuracy for polyp segmentation and in the medical imaging field. The implementation is available on https://github.com/huyquoctrinh/KDAS.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| medical-image-segmentation-on-cvc-clinicdb | KDAS | mIoU: 0.872 mean Dice: 0.925 |
| medical-image-segmentation-on-cvc-colondb | KDAS | Average MAE: 0.032 mIoU: 0.679 mean Dice: 0.759 |
| medical-image-segmentation-on-kvasir-seg | KDAS | Average MAE: 0.027 mIoU: 0.848 mean Dice: 0.913 |
| polyp-segmentation-on-kvasir-seg | KDAS | mDice: 0.913 mIoU: 0.848 |
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