深度学习增强了热成像模型,用于Sahiwal奶牛乳腺炎的早期和精确检测。

IF 1.8 3区 农林科学 Q1 VETERINARY SCIENCES
S.L. Gayathri , M. Bhakat , T.K. Mohanty , R.R. Kumar , K.K. Chaturvedi , S. Kumar
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引用次数: 0

摘要

乳腺炎是一种多因素生产疾病,对奶牛养殖业构成重大挑战,需要采用综合和精确的诊断方法。本研究探讨了热成像与深度学习相结合在泌乳奶牛乳腺炎检测中的潜力。在这项研究中,使用手持式热像仪捕获了Sahiwal奶牛乳房区域的热图像,并对其进行分析,将乳房区分为健康、亚临床乳腺炎(SCM)和临床乳腺炎(CM)。分类基于加州乳腺炎测试(CMT)评分、体细胞计数(SCC)值和热图像分析。此外,开发了卷积神经网络(CNN)模型来区分健康的乳房和受CM或SCM影响的乳房。CNN模型将健康区与CM区分开,训练、验证和测试准确率达到99%,准确率、召回率和f1得分均为0.99。同样,将健康季度与SCM区分的模型分别记录了89%和85%的训练和验证准确率,而测试结果显示准确率为84%,精密度为0.87,召回率为0.79,f1得分为0.83。这些发现突出了基于cnn的热成像在准确检测乳腺炎方面的潜力,有助于推进精准奶牛养殖和牲畜健康管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning enhanced thermographic modeling for early and precise mastitis detection in Sahiwal cows
Mastitis, a multifactorial production disease, poses a significant challenge to dairy farming, necessitating the adoption of integrated and precision-based diagnostic approaches. This study explores the potential of thermal imaging combined with deep learning to enhance mastitis detection in lactating dairy cows. In this study, thermal images of the udder region of Sahiwal cows were captured using a handheld thermal camera and analyzed to classify udder quarters as healthy, Sub-clinical Mastitis (SCM), and Clinical Mastitis (CM). The classification was based on California Mastitis Test (CMT) scores, Somatic Cell Count (SCC) values, and thermal image analysis. Further, Convolutional Neural Network (CNN) models were developed to distinguish between healthy udder quarters and those affected by CM or SCM. The CNN model differentiating healthy quarters from CM achieved training, validation, and testing accuracies of 99 %, with precision, recall, and F1-score all at 0.99. Similarly, the model distinguishing healthy quarters from SCM recorded training and validation accuracies of 89 % and 85 %, respectively, while testing results showed an accuracy of 84 %, a precision of 0.87, a recall of 0.79, and an F1-score of 0.83. These findings highlight the potential of CNN-based thermal imaging for accurate mastitis detection, contributing to advancements in precision dairy farming and livestock health management.
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来源期刊
Research in veterinary science
Research in veterinary science 农林科学-兽医学
CiteScore
4.40
自引率
4.20%
发文量
312
审稿时长
75 days
期刊介绍: Research in Veterinary Science is an International multi-disciplinary journal publishing original articles, reviews and short communications of a high scientific and ethical standard in all aspects of veterinary and biomedical research. The primary aim of the journal is to inform veterinary and biomedical scientists of significant advances in veterinary and related research through prompt publication and dissemination. Secondly, the journal aims to provide a general multi-disciplinary forum for discussion and debate of news and issues concerning veterinary science. Thirdly, to promote the dissemination of knowledge to a broader range of professions, globally. High quality papers on all species of animals are considered, particularly those considered to be of high scientific importance and originality, and with interdisciplinary interest. The journal encourages papers providing results that have clear implications for understanding disease pathogenesis and for the development of control measures or treatments, as well as those dealing with a comparative biomedical approach, which represents a substantial improvement to animal and human health. Studies without a robust scientific hypothesis or that are preliminary, or of weak originality, as well as negative results, are not appropriate for the journal. Furthermore, observational approaches, case studies or field reports lacking an advancement in general knowledge do not fall within the scope of the journal.
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