Individual identification of dairy cows based on Gramian Angular Field and Migrating Convolutional Neural Networks

ShiQi Xi, Chenjie Su, Xiaodong Cheng, Xi Li
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Abstract

The individual identification of dairy cows is of great significance to the development of modern intelligent animal husbandry. It is of great help in remotely monitoring the individual health status of dairy cows and promoting the field of live dairy cattle leasing. Traditional methods of individual identification of dairy cows rely on manual identification, or artificial feature extraction of cow activity data so the accuracy of individual identification of dairy cows cannot be guaranteed. Aiming at this problem, this paper proposes a classification method based on Gramian Angle Field and Migrating Convolutional Neural Networks. By transforming the activity data of 20 cows for 56 days into the Gramian Angle Field and converting it into a three-dimensional image, the time dependence and correlation of the cow activity data are preserved. Combined with the idea of migration learning, a model called MCNN based on VGG16 is proposed. The MCNN model of the generated cow images is classified. The experimental results show that the classification accuracy of this method is about 99.3%, and the classification time is short, which can effectively realize the individual identification of dairy cows.
基于Gramian角场和迁移卷积神经网络的奶牛个体识别
奶牛个体识别对现代智能畜牧业的发展具有重要意义。这对奶牛个体健康状况的远程监测,促进奶牛活畜租赁领域的发展有很大的帮助。传统的奶牛个体识别方法依赖于人工识别,或者对奶牛活动数据进行人工特征提取,无法保证奶牛个体识别的准确性。针对这一问题,本文提出了一种基于格拉曼角场和迁移卷积神经网络的分类方法。通过将20头奶牛56天的活动数据转换成格拉曼角场,并将其转换成三维图像,保留了奶牛活动数据的时间依赖性和相关性。对生成的奶牛图像进行MCNN模型分类。实验结果表明,该方法的分类准确率约为99.3%,分类时间短,可有效实现奶牛的个体识别。
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