Deep Learning Based Lumpy Skin Disease (LSD) Detection

Dhiren Dommeti, Siva Ramakrishna Nallapati, Chalamalasetti Lokesh, Singasani P Bhuvanesh, Venkata Vara Prasad Padyala, P. V V S Srinivas
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引用次数: 1

Abstract

The emergence of the lumpy skin disease has become a major threat to the livestock industry in recent years, causing high economic losses and health risks to both animals and humans. This virus is difficult to detect due to its complexity, making the early detection and accurate diagnosis of this virus essential. This study will explore the utilization of convolutional neural networks (CNNs) to efficiently and accurately detect and identify the LSDV than traditional methods. Further, the advantages of using CNNs for this purpose has been discussed and some of the applications of this new technology has also been explored. Additionally, the future potential of using CNNs to perform virus detection is also discussed. However, Lumpy disease is classified differently based on its severity. To determine the extent to which the animal is impacted by lumpy skin disease, it is necessary to recognize various stages of the disease. This research study referred to the use of several CNN architectures and Regression algorithms to detect the Lumpy skin disease virus as early as possible. The architectures explored are and the EfficientNet-EfficientNetB7 architecture, MobileNetV2, EfficientNet-EfficientNetB3 architecture, VGG16, InceptionV3, ResNet50, VGG19, Xception and DenseNet201. The paper thoroughly describes all of the steps required to carry out the disease detection model, from data collection to process and outcome.
基于深度学习的肿块性皮肤病(LSD)检测
近年来,肿块性皮肤病的出现已成为畜牧业的主要威胁,给动物和人类造成了巨大的经济损失和健康风险。该病毒由于其复杂性而难以发现,因此早期发现和准确诊断至关重要。本研究将探索利用卷积神经网络(cnn)比传统方法更有效、更准确地检测和识别LSDV。此外,本文还讨论了使用cnn的优点,并探讨了这项新技术的一些应用。此外,还讨论了使用cnn进行病毒检测的未来潜力。然而,根据其严重程度,肿块病的分类不同。为了确定动物受肿块性皮肤病影响的程度,有必要认识到疾病的各个阶段。本研究涉及使用几种CNN架构和回归算法尽早检测肿块皮肤病病毒。研究的体系结构包括:EfficientNet-EfficientNetB7体系结构、MobileNetV2、EfficientNet-EfficientNetB3体系结构、VGG16、InceptionV3、ResNet50、VGG19、Xception和DenseNet201。本文详细描述了实施疾病检测模型所需的所有步骤,从数据收集到过程和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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