Saha Dip Kumar
American International University-Bangladesh, Department of Computer Science and Engineering, Dhaka, Bangladesh.
Heliyon. 2024 Jul 10;10(14):e34242. doi: 10.1016/j.heliyon.2024.e34242. eCollection 2024 Jul 30.
Cow diseases are a major source of concern for people. Some diseases in animals that are discovered in their early stages can be treated while they are still treatable. If lumpy skin disease (LSD) is not properly treated, it can result in significant financial losses for the farm animal industry. Animals like cows that sign this disease have their skin seriously affected. A reduction in milk production, reduced fertility, growth retardation, miscarriage, and occasionally death are all detrimental effects of this disease in cows. Over the past three months, LSD has affected thousands of cattle in nearly fifty districts across Bangladesh, causing cattle farmers to worry about their livelihood. Although the virus is very contagious, after receiving the right care for a few months, the affected cattle can be cured. The goal of this study was to use various deep learning and machine learning models to determine whether or not cows had lumpy disease. To accomplish this work, a Convolution neural network (CNN) based novel architecture is proposed for detecting the illness. The lumpy disease-affected area has been identified using image preprocessing and segmentation techniques. After the extraction of numerous features, our proposed model has been evaluated to classify LSD. Four CNN models, DenseNet, MobileNetV2, Xception, and InceptionResNetV2 were used to classify the framework, and evaluation metrics were computed to determine how well the classifiers worked. MobileNetV2 has been able to achieve 96% classification accuracy and an AUC score of 98% by comparing results with recently published relevant works, which seems both good and promising.
牛的疾病是人们主要关注的问题。动物身上一些在早期被发现的疾病在仍可治疗时是能够得到医治的。如果牛结节性皮肤病(LSD)得不到妥善治疗,可能会给家畜养殖业造成重大经济损失。感染这种疾病的牛等动物,其皮肤会受到严重影响。产奶量下降、生育能力降低、生长发育迟缓、流产,偶尔还会导致死亡,这些都是这种疾病对奶牛的有害影响。在过去三个月里,牛结节性皮肤病已经影响了孟加拉国近五十个地区的数千头牛,这让养牛户担心自己的生计。尽管这种病毒传染性很强,但在接受几个月的正确护理后,受感染的牛是可以治愈的。本研究的目的是使用各种深度学习和机器学习模型来确定奶牛是否患有结节性疾病。为完成这项工作,提出了一种基于卷积神经网络(CNN)的新颖架构来检测这种疾病。已经使用图像预处理和分割技术确定了结节性疾病的感染区域。在提取众多特征之后,对我们提出的模型进行了评估,以对牛结节性皮肤病进行分类。使用四种CNN模型,即DenseNet、MobileNetV2、Xception和InceptionResNetV2对该框架进行分类,并计算评估指标以确定分类器的工作效果。通过与最近发表的相关作品比较结果,MobileNetV2能够达到96%的分类准确率和98%的AUC分数,这看起来既不错又很有前景。