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基于机器学习算法的绵羊放牧和反刍行为分类中的特征选择与比较。

Feature Selection and Comparison of Machine Learning Algorithms in Classification of Grazing and Rumination Behaviour in Sheep.

机构信息

School of Veterinary Medicine and Science, University of Nottingham, Sutton Bonington Campus, Leicestershire LE12 5RD, UK.

School of Computer Science, Jubilee Campus, University of Nottingham, Nottingham NG8 1BB, UK.

出版信息

Sensors (Basel). 2018 Oct 19;18(10):3532. doi: 10.3390/s18103532.

Abstract

Grazing and ruminating are the most important behaviours for ruminants, as they spend most of their daily time budget performing these. Continuous surveillance of eating behaviour is an important means for monitoring ruminant health, productivity and welfare. However, surveillance performed by human operators is prone to human variance, time-consuming and costly, especially on animals kept at pasture or free-ranging. The use of sensors to automatically acquire data, and software to classify and identify behaviours, offers significant potential in addressing such issues. In this work, data collected from sheep by means of an accelerometer/gyroscope sensor attached to the ear and collar, sampled at 16 Hz, were used to develop classifiers for grazing and ruminating behaviour using various machine learning algorithms: random forest (RF), support vector machine (SVM), nearest neighbour (kNN) and adaptive boosting (Adaboost). Multiple features extracted from the signals were ranked on their importance for classification. Several performance indicators were considered when comparing classifiers as a function of algorithm used, sensor localisation and number of used features. Random forest yielded the highest overall accuracies: 92% for collar and 91% for ear. Gyroscope-based features were shown to have the greatest relative importance for eating behaviours. The optimum number of feature characteristics to be incorporated into the model was 39, from both ear and collar data. The findings suggest that one can successfully classify eating behaviours in sheep with very high accuracy; this could be used to develop a device for automatic monitoring of feed intake in the sheep sector to monitor health and welfare.

摘要

放牧和反刍是反刍动物最重要的行为,因为它们大部分的日常时间都用于进行这些行为。对采食行为的持续监测是监测反刍动物健康、生产力和福利的重要手段。然而,由人工操作员进行的监测容易受到人为因素的影响,既费时又费钱,尤其是在牧场或自由放养的动物上。使用传感器自动获取数据,以及使用软件对行为进行分类和识别,为解决这些问题提供了巨大的潜力。在这项工作中,使用耳夹和项圈上的加速度计/陀螺仪传感器收集的 16Hz 采样绵羊数据,使用各种机器学习算法(随机森林(RF)、支持向量机(SVM)、最近邻(kNN)和自适应增强(Adaboost))开发了用于放牧和反刍行为的分类器。从信号中提取的多个特征按其对分类的重要性进行排序。在比较分类器时,考虑了几种性能指标,包括所使用的算法、传感器位置和使用的特征数量。随机森林的总体准确率最高:项圈为 92%,耳夹为 91%。基于陀螺仪的特征对于采食行为具有最大的相对重要性。最佳的特征数量为 39 个,来自耳夹和项圈数据。研究结果表明,人们可以成功地以非常高的精度对绵羊的采食行为进行分类;这可以用于开发一种自动监测绵羊饲料摄入量的设备,以监测健康和福利。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e82a/6210268/e691fbec6652/sensors-18-03532-g001.jpg

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