Adaptive Hybrid Optimizer based Framework for Lumpy Skin Disease Identification
Ubaidullah, Muhammad Abid Hussain, Mohsin Raza Jafri, Rozi Khan, Moid Sandhu, Abd Ullah Khan, Hyundong Shin

TL;DR
This paper introduces LUMPNet, a hybrid deep learning framework with an adaptive optimizer for early detection of Lumpy Skin Disease in cattle, achieving high accuracy and outperforming existing methods.
Contribution
The paper proposes a novel hybrid deep learning approach with an adaptive optimizer specifically designed for early LSD detection from images, improving accuracy and training stability.
Findings
Achieves 99% training accuracy in LSD detection
Attains 98% validation accuracy, outperforming existing schemes
Demonstrates superior performance over models trained with standard optimizers
Abstract
Lumpy Skin Disease (LSD) is a contagious viral infection that significantly deteriorates livestock health, thereby posing a serious threat to the global economy and food security. Owing to its rapid spread characteristics, early and precise identification is crucial to prevent outbreaks and ensure timely intervention. In this paper, we propose a hybrid deep learning-based approach called LUMPNet for the early detection of LSD. LUMPNet utilizes image data to detect and classify skin nodules -- the primary indicator of LSD. To this end, LUMPNet uses YOLOv11, EfficientNet-based CNN classifier with compound scaling, and a novel adaptive hybrid optimizer. More precisely, LUMPNet detects and localizes LSD skin nodules and lesions on cattle images. It exploits EfficientNet to classify the localized cattle images into LSD-affected or healthy categories. To stabilize and accelerate the training…
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Taxonomy
TopicsPoxvirus research and outbreaks · Cutaneous Melanoma Detection and Management · Face recognition and analysis
