Robust and Annotation-Free Wound Segmentation on Noisy Real-World Pressure Ulcer Images: Towards Automated DESIGN-R\textsuperscript{\textregistered} Assessment
Yun-Cheng Tsai

TL;DR
This paper introduces a robust, annotation-efficient wound segmentation pipeline that generalizes across different body sites using minimal supervision, enabling scalable and automated DESIGN-R assessment without extensive retraining.
Contribution
The authors present a zero fine-tuning, annotation-light wound segmentation method combining YOLOv11n and FUSegNet, capable of generalizing across diverse wound types without pixel-level annotations.
Findings
Improved mean IoU by 23 percentage points over baseline.
Increased DESIGN-R size estimation accuracy from 71% to 94%.
Effective cross-site wound segmentation with minimal supervision.
Abstract
Purpose: Accurate wound segmentation is essential for automated DESIGN-R scoring. However, existing models such as FUSegNet, which are trained primarily on foot ulcer datasets, often fail to generalize to wounds on other body sites. Methods: We propose an annotation-efficient pipeline that combines a lightweight YOLOv11n-based detector with the pre-trained FUSegNet segmentation model. Instead of relying on pixel-level annotations or retraining for new anatomical regions, our method achieves robust performance using only 500 manually labeled bounding boxes. This zero fine-tuning approach effectively bridges the domain gap and enables direct deployment across diverse wound types. This is an advance not previously demonstrated in the wound segmentation literature. Results: Evaluated on three real-world test sets spanning foot, sacral, and trochanter wounds, our YOLO plus FUSegNet…
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Taxonomy
TopicsPressure Ulcer Prevention and Management · Diabetic Foot Ulcer Assessment and Management · Wound Healing and Treatments
