Explainable dual-teacher knowledge distillation with confidence-aware knowledge filtering for lightweight wound segmentation
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BRAC University
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Abstract
Medical image segmentation plays a crucial role in automated wound assessment;
however, achieving high accuracy while maintaining computational efficiency and
interpretability remains a significant challenge. Even though knowledge distillation
can improve overall efficiency in most cases, relying entirely on the teacher(s) can
lead to poor predictions. This thesis presents a novel framework that integrates
explainable artificial intelligence with an efficient knowledge distillation pipeline for
wound segmentation. A dual-teacher knowledge distillation strategy is employed to
transfer complementary representations from heterogeneous high-capacity models
to a lightweight student network. To enhance the reliability of knowledge transfer,
a confidence-aware knowledge filtering mechanism is introduced, which selectively
guides the student model using only high-confidence predictions from the teachers.
In addition, a lightweight yet effective student architecture, termed SE-HybridConv-
Tiny-UNet, is proposed. This model incorporates hybrid convolutional operations
and channel attention mechanisms to improve feature representation while maintaining
a low parameter count. Extensive experiments conducted on wound segmentation
datasets demonstrate that the proposed framework achieves competitive
performance compared to larger models, while significantly reducing computational
complexity. Furthermore, explainability is incorporated using GradCAM++, enabling
visual validation of model decisions and ensuring that predictions are based
on clinically relevant regions. The consistency observed between validation and
test-time explanations highlights the generalization capability and reliability of the
proposed approach. Overall, this work establishes an effective balance between accuracy,
efficiency, and interpretability, making it suitable for deployment in real-world,
resource-constrained healthcare environments.
Description
Cataloged from PDF version of thesis.
Includes bibliographical references (pages 86-93).
This thesis is submitted in partial fulfillment of the requirements for the degree of Master of Science in Computer Science and Engineering, 2026.
Includes bibliographical references (pages 86-93).
This thesis is submitted in partial fulfillment of the requirements for the degree of Master of Science in Computer Science and Engineering, 2026.
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Thesis