...
首页> 外文期刊>Computers and Electronics in Agriculture >Behavioral classification of data from collars containing motion sensors in grazing cattle
【24h】

Behavioral classification of data from collars containing motion sensors in grazing cattle

机译:牲畜运动传感器项圈数据的行为分类

获取原文
获取原文并翻译 | 示例
           

摘要

Remote monitoring of animal behavior offers great potential to improve livestock management however technologies able to collect data at high frequency and accurate data classification methods are required. The objective of this study was to develop a methodology capable of performing unsupervised behavioral classification of electronic data collected at high frequency from collar-mounted motion and GPS sensors in grazing cattle. Two independent trials were conducted, one for developing the classification algorithm (4 groups of 11 steers) and a second for its evaluation (14 steers). Each steer was fitted with a collar containing GPS and a 3-axis accelerometer that collected data at 4 and 10 Hz, respectively. Foraging, ruminating, traveling, resting and 'other active behaviors' (which included scratching against objects, head shaking, and grooming) were observed and recorded continuously at the nearest second in animals wearing collars. Collar data were aggregated to 10-s intervals through the mean (indicative of the position of the neck and travel speed) and standard deviation (SD; indicative of activity level) and then log-transformed for analysis. The histograms of travel speed showed 3 populations and observations revealed these populations represented stationary, slow and fast travel behaviors. The histograms of the accelerometer X-axis mean showed populations corresponding with behaviors of head down or head up. The histograms of the accelerometer X-axis SD showed 3 populations representing behaviors with high, medium and low activity levels. Mixture models were fitted to data from each animal in both trials to calculate threshold values corresponding to where behaviors transitioned between different states. These thresholds from the 3 sensor signatures were then used in a decision tree to classify all 10-s data where behaviors were unknown into 5 mutually exclusive behaviors. The algorithm correctly classified 85.5% and 90.5% of all data points in the development and evaluation datasets, respectively. Foraging showed the greatest sensitivity (93.7% and 98.4%) and specificity (94.6% and 99.4%) followed by ruminating (sensitivity 97% and 87%, and specificity 90% and 95%) for development and evaluation trials, respectively. Major advantages of mixture models include computational efficiency suitable for large data sets (e.g. >2 million data lines), minimal requirement for training datasets, and estimation of threshold values for individual animals under unknown and varying environmental conditions. The technology and methodology allows for the automatic and real-time monitoring of behavior with high spatial and temporal resolution which could benefit livestock industries beyond the research domain for improved animal and ecological management. (C) 2014 Elsevier B.V. All rights reserved.
机译:对动物行为的远程监测为改善牲畜管理提供了巨大潜力,但是需要能够以高频率收集数据和准确的数据分类方法的技术。这项研究的目的是开发一种方法,该方法能够对在放牧牛群中安装在项圈上的运动和GPS传感器以高频采集的电子数据进行无监督的行为分类。进行了两项独立试验,一项用于开发分类算法(4组,每组11头),另一项用于评估算法(14头)。每个转向都装有一个包含GPS和3轴加速度计的项圈,分别收集4 Hz和10 Hz的数据。观察并记录了戴着项圈的动物的觅食,反刍,旅行,休息和“其他活跃行为”(包括抓挠物体,摇头和修饰),并在最近一秒钟连续记录下来。通过平均值(指示颈部位置和行进速度)和标准偏差(SD;指示活动水平)将衣领数据汇总到10秒间隔,然后进行对数转换以进行分析。行驶速度的直方图显示了3个种群,观察发现这些种群代表了平稳,缓慢和快速的行驶行为。加速度计X轴平均值的直方图显示的人口与低头或抬头行为相对应。加速度计X轴SD的直方图显示了3个总体,分别表示高,中和低活动水平的行为。在两次试验中,将混合物模型拟合到来自每只动物的数据,以计算对应于行为在不同状态之间转变的位置的阈值。然后将来自3个传感器签名的这些阈值用于决策树中,以将行为未知的所有10-s数据分类为5个互斥行为。该算法分别正确地将开发和评估数据集中所有数据点的85.5%和90.5%进行了分类。觅食显示最大的敏感性(93.7%和98.4%)和特异性(94.6%和99.4%),其后分别是开发和评估试验的结果(敏感性97%和87%,特异性90%和95%)。混合模型的主要优点包括适用于大型数据集(例如> 200万条数据线)的计算效率,对训练数据集的最低要求以及在未知和变化的环境条件下估算单个动物的阈值的能力。该技术和方法允许以高时空分辨率对行为进行自动和实时监控,这可以使研究领域以外的畜牧业受益,从而改善动物和生态管理。 (C)2014 Elsevier B.V.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号