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Behavior classification of goats using 9-axis multi sensors: The effect of imbalanced datasets on classification performance

机译:使用9轴多传感器的山羊的行为分类:不平衡数据集对分类性能的影响

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Recent developments of small electronic instruments have enabled the classification of animal behavior using simultaneous measurements of various bio-logging data such as acceleration, magnetism, and angular velocity. Following technological progress, studies on the behavioral classification of ruminants combining measurements based on accelerometers, magnetometers, and gyroscopes have received attention. However, while the issue of class imbalance has recently become a serious challenge in classification by machine learning, few behavioral classification studies on livestock animals have focused on the effect of equalizing the prevalence of each behavior to improve the problem caused by the imbalance of data on classification performance. The aims of this study were to classify the behaviors of goats using a back-mounted 9-axis multi sensor (a tri-axial accelerometer, a tri-axial gyroscope, and a tri-axial magnetometer) with machine learning algorithms, and to evaluate changes in the predictive scores by equalizing the prevalence of each behavior. The behaviors of three goats grazing on an experimental pasture were logged for approximately 12 h with the multi sensors. The behaviors were recorded at 1-second intervals with time-lapse cameras throughout the experimental period. Three behaviors were classified: lying, standing, and grazing. Over 100 different variables were extracted from the raw sensor data, and classification was executed by inputting the variables into two supervised machine learning algorithms: K-nearest neighbors (KNN) and decision tree (DT). Moreover, because the prevalence of standing was low compared to that of grazing, the number of observations of each behavior in the training datasets for classification models was equalized by undersampling. As expected, the results indicated that the overall accuracies of both algorithms using all variables derived from the three sensors were higher than those using only variables from the acceleration data. Furthermore, both the algorithms using the variables from the acceleration and magnetism data could classify the behaviors as accurate as the algorithms using variables from all sensor data. Balancing the prevalence of each behavior resulted in a decrease in the F1 scores of the lying and grazing classifications but a slight increase in those of the standing classification by DT. In conclusion, our results suggest that, in addition to tri-axial acceleration, tri-axial magnetism is useful for classifying lying, standing, and grazing activities of ruminants and that equalizing the number of data for each behavior is important to correctly assess the predictive accuracy of behavioral classifications, particularly for the behavior with low prevalence.
机译:小型电子仪器的最新发展使得使用同时测量各种生物测井数据的动物行为进行分类,例如加速度,磁化和角速度。在技​​术进步之后,基于加速度计,磁力计和陀螺仪组合测量的反刍动物行为分类的研究受到了关注。然而,虽然阶级失衡问题最近在机器学习分类中成为一个严峻挑战,但对牲畜动物的少数行为分类研究侧重于均衡每个行为的患病率,以改善由数据不平衡引起的问题分类绩效。本研究的目的是使用带有机器学习算法的后安装的9轴多传感器(三轴加速度计,三轴陀螺仪和三轴磁仪)对山羊的行为进行分类,并使用机器学习算法和评估通过均衡每种行为的普遍性来改变预测分数。在实验牧场上放牧的三只山羊的行为被多传感器记录了大约12小时。在整个实验期间,该行为以1秒的间隔记录在1秒的间隔。三项行为被分类:撒谎,站立和放牧。从原始传感器数据中提取超过100种不同的变量,通过将变量输入到两个监督机器学习算法中来执行分类:K-CORMATE邻居(KNN)和决策树(DT)。此外,由于站立的普遍率与放牧相比,所以通过欠采样均衡了分类模型中的训练数据集中的每个行为的观察次数。如预期,结果表明,使用从三个传感器导出的所有变量的两种算法的总体精度高于来自加速度数据的变量的算法。此外,使用来自加速和磁数据的变量的算法可以将行为分类为使用来自所有传感器数据的变量的算法准确。平衡每个行为的患病率导致躺着和放牧分类的F1分数减少,但是DT的常设分类的略微增加。总之,我们的结果表明,除了三轴加速外,三轴磁性对于反刍动物的撒谎,站立和放牧活动而言,还可用于正确评估预测性的重要评估和均衡的数据数量是重要的。行为分类的准确性,特别是对于具有低普及率的行为。

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