RESEARCH ON IDENTIFICATION AND CLASSIFICATION METHOD OF IMBALANCED DATA SET OF PIG BEHAVIOR

Min-Suk Jin, Bowen Yang, Chunguang Wang
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Abstract

To address the problem of the low accuracy and poor robustness of modeling methods for imbalanced data sets of pig behavior identification and classification, the three commonly used re-sampling methods of under-sampling, SMOTE and Borderline-SMOTE are compared, and an adaptive boundary data augmentation algorithm AD-BL-SMOTE is proposed. The activity of the pigs was measured using triaxial accelerometers, which were fixed on the backs of the pigs. A multilayer feed-forward neural network was trained and validated with 21 input features to classify four pig activities: lying, standing, walking, and exploring. The results showed that re-sampling methods are an effective way to improve the performance of pig behavior identification and classification. Moreover, AD-BL-SMOTE could yield greater improvements in classification performance than the other three methods for balancing the training data set. The overall major mean accuracy of lying, standing, walking, and exploring by pigs A, B
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猪行为不平衡数据集识别与分类方法研究
针对猪行为识别与分类中不平衡数据集建模方法精度低、鲁棒性差的问题,比较了欠采样、SMOTE和Borderline-SMOTE三种常用的重采样方法,提出了自适应边界数据增强算法AD-BL-SMOTE。猪的活动是用三轴加速度计测量的,加速度计固定在猪的背上。采用21个输入特征训练并验证了多层前馈神经网络,对猪躺着、站立、行走和探索四种活动进行分类。结果表明,重采样方法是提高猪行为识别和分类性能的有效途径。此外,AD-BL-SMOTE在平衡训练数据集的分类性能上比其他三种方法有更大的提高。猪躺着、站立、行走和探索的总体平均准确率为A、B
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