Chen Guipeng, Li Cong, Guo Yang, Shu Hang, Cao Zhen, Xu Beibei
Agricultural Economics and Information Institute, Jiangxi Academy of Agriculture Sciences, Nanchang, China.
AgroBioChem, Precision Livestock and Nutrition Unit, Gembloux Agro-Bio Tech, University of Liège, Gembloux, Belgium.
Front Vet Sci. 2022 May 25;9:822621. doi: 10.3389/fvets.2022.822621. eCollection 2022.
Automatic monitoring of feeding behavior especially rumination and eating in cattle is important to keep track of animal health and growth condition and disease warnings. The noseband pressure sensor is not only able to accurately sense the pressure change of the cattle's jaw movements, which can directly reflect the cattle's chewing behavior, but also has strong resistance to interference. However, it is difficult to keep the same initial pressure while wearing the pressure sensor, and this will pose a challenge to process the feeding behavior data. This article proposed a machine learning approach aiming at eliminating the influence of initial pressure on the identification of rumination and eating behaviors. The method mainly used the local slope to obtain the local data variation and combined Fast Fourier Transform (FFT) to extract the frequency-domain features. Extreme Gradient Boosting Algorithm (XGB) was performed to classify the features of rumination and eating behaviors. Experimental results showed that the local slope in combination with frequency-domain features achieved an F1 score of 0.96, and recognition accuracy of 0.966 in both rumination and eating behaviors. Combined with the commonly used data processing algorithms and time-domain feature extraction method, the proposed approach improved the behavior recognition accuracy. This work will contribute to the standardized application and promotion of the noseband pressure sensors.
自动监测牛的采食行为,尤其是反刍和进食行为,对于跟踪动物健康、生长状况以及疾病预警非常重要。鼻带压力传感器不仅能够准确感知牛下颌运动的压力变化,直接反映牛的咀嚼行为,而且具有很强的抗干扰能力。然而,佩戴压力传感器时很难保持相同的初始压力,这将给采食行为数据的处理带来挑战。本文提出了一种机器学习方法,旨在消除初始压力对反刍和进食行为识别的影响。该方法主要利用局部斜率获取局部数据变化,并结合快速傅里叶变换(FFT)提取频域特征。采用极端梯度提升算法(XGB)对反刍和进食行为的特征进行分类。实验结果表明,局部斜率结合频域特征的F1分数达到0.96,反刍和进食行为的识别准确率均为0.966。与常用的数据处理算法和时域特征提取方法相结合,该方法提高了行为识别准确率。这项工作将有助于鼻带压力传感器的标准化应用和推广。