Adaptive Hybrid Optimizer based Framework for Lumpy Skin Disease Identification

By: Muhammad Tahir, Abdul Basit, Muhammad Awais, Muhammad Imran, Farman Ali, Muhammad Shoaib, Ali Raza

Published: 2026-01-06

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Abstract

Lumpy Skin Disease (LSD) is a contagious viral infection that significantly deteriorates livestock health. Early and precise identification is crucial. This paper proposes a hybrid deep learning-based approach called LUMPNet for the early detection of LSD, utilizing image data to detect and classify skin nodules. LUMPNet uses YOLOv11, EfficientNet-based CNN classifier, and a novel adaptive hybrid optimizer. Results indicate 99% LSD detection training accuracy and 98% validation accuracy, outperforming existing schemes.

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