Tamura Tomoya, Okubo Yuki, Deguchi Yoshitaka, Koshikawa Shizu, Takahashi Masahiro, Chida Yasushi, Okada Keiji
United Graduate School of Veterinary Sciences, Gifu University, Gifu, Japan.
Iwate Agricultural Mutual Aid Association, Morioka, Japan.
Anim Sci J. 2019 Apr;90(4):589-596. doi: 10.1111/asj.13184. Epub 2019 Feb 17.
Demand has been increasing recently for an automated monitoring system of animal behavior as a tool for the management of livestock animals. This study investigated the association between the behavior of dairy cattle and the acceleration data collected using three-axis neck-mounted accelerometers, as well as the feasibility of improving the precision of behavior classifications through machine learning. In total 38 Holstein dairy cows were used, and kept in four different farms. A logger was mounted to each collar to obtain acceleration data for calculating the activity level and variations. At the same time the behavior of the cattle was observed visually. Characteristic acceleration waves were recorded for eating, rumination, and lying, respectively; and the activity level and variations were significantly different among these behaviors (p < 0.01). Decision tree learning was performed on the data set from Farm A and validated its precision; which proved to be 99.2% in cross-validation, and 100% in test data sets from Farms B to D. This study showed that highly precise classifications for eating, rumination, and lying is possible by using decision tree learning to calculate the activity level and variations of cattle based on the data obtained by three-axis accelerometers mounted to a collar.
作为家畜管理工具的动物行为自动监测系统的需求近来一直在增加。本研究调查了奶牛行为与使用三轴颈部佩戴式加速度计收集的加速度数据之间的关联,以及通过机器学习提高行为分类精度的可行性。总共使用了38头荷斯坦奶牛,并将它们饲养在四个不同的农场。每个项圈上都安装了一个记录仪,以获取用于计算活动水平和变化的加速度数据。与此同时,对奶牛的行为进行了目视观察。分别记录了进食、反刍和躺卧的特征加速度波;这些行为之间的活动水平和变化存在显著差异(p < 0.01)。对来自农场A的数据集进行了决策树学习,并验证了其精度;在交叉验证中精度为99.2%,在来自农场B至D的测试数据集中精度为100%。本研究表明,通过使用决策树学习,根据安装在项圈上的三轴加速度计获得的数据来计算奶牛的活动水平和变化,可以对进食、反刍和躺卧进行高精度分类。