ERYXNet: A lightweight yet robust architecture for multi-type wound classification

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2026-04-13

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Springer
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Inglês

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Resumo

The challenge of accurate wound classification lies in distinguishing etiologies with high visual similarity, a task for which existing models often sacrifice efficiency for accuracy. Addressing this, we introduce ERYXNet, a novel architecture that is not a straightforward fusion but a carefully engineered integration through scaling and custom pruning of components from EfficientNet, ResNet, and the YOLOv8 classifier. ERYXNet is designed to capture multi-scale features efficiently, from localized textures to global context. When trained from scratch on a dataset encompassing nine wound types, a fake wound (e.g., tattoos and pigments), and normal skin, ERYXNet achieves classification accuracies of 95.32% and 92.31% in our experiments, setting a new state-of-the-art benchmark without employing transfer learning under the same conditions. It also proved more efficient, requiring fewer FLOPs and parameters than state-of-the-art alternatives. This balance of high accuracy and low computational demand makes ERYXNet a practical solution for real-world clinical applications.

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Classification, EfficientNet, Machine learning, Medical imaging, ResNet, YOLOv8

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Citação

Acharjee, T., Chatterjee, R., Acharya, B., & Moreira, F. (2026). ERYXNet: A lightweight yet robust architecture for multi-type wound classification. Neural Computing and Applications, (published online: 13 April 2026), 1-29. https://doi.org/10.1007/s00521-026-11934-2. Repositório Institucional UPT. https://hdl.handle.net/11328/7059

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