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Incorporating machine vision in precision dairy farming technologies.

机译:将机器视觉纳入精密的奶牛养殖技术。

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摘要

The inclusion of precision dairy farming technologies in dairy operations is an area of increasing research and industry direction. Machine vision based systems are suitable for the dairy environment as they do not inhibit workflow, are capable of continuous operation, and can be fully automated. The research of this dissertation developed and tested 3 machine vision based precision dairy farming technologies tailored to the latest generation of RGB+D cameras. The first system focused on testing various imaging approaches for the potential use of machine vision for automated dairy cow feed intake monitoring. The second system focused on monitoring the gradual change in body condition score (BCS) for 116 cows over a nearly 7 month period. Several proposed automated BCS systems have been previously developed by researchers, but none have monitored the gradual change in BCS for a duration of this magnitude. These gradual changes infer a great deal of beneficial and immediate information on the health condition of every individual cow being monitored. The third system focused on automated dairy cow feature detection using Haar cascade classifiers to detect anatomical features. These features included the tailhead, hips, and rear regions of the cow body. The features chosen were done so in order to aid machine vision applications in determining if and where a cow is present in an image or video frame. Once the cow has been detected, it must then be automatically identified in order to keep the system fully automated, which was also studied in a machine vision based approach in this research as a complimentary aspect to incorporate along with cow detection. Such systems have the potential to catch poor health conditions developing early on, aid in balancing the diet of the individual cow, and help farm management to better facilitate resources, monetary and otherwise, in an appropriate and efficient manner. Several different applications of this research are also discussed along with future directions for research, including the potential for additional automated precision dairy farming technologies, integrating many of these technologies into a unified system, and the use of alternative, potentially more robust machine vision cameras.;KEYWORDS: Machine Vision, Structured Light Illumination, Haar Cascade Classifier, Optical Flow, Precision Dairy Farming.
机译:在乳品生产中采用精密的乳品养殖技术是一个不断增加的研究和行业方向的领域。基于机器视觉的系统不影响工作流程,能够连续运行,并且可以实现全自动,因此适用于乳制品环境。本文的研究开发并测试了针对最新一代RGB + D相机量身定制的3种基于机器视觉的精密奶牛养殖技术。第一个系统专注于测试各种成像方法,以将机器视觉潜在地用于自动奶牛饲料摄入量监控。第二个系统的重点是在近7个月的时间内监测116头母牛的身体状况评分(BCS)的逐渐变化。研究人员先前已经开发了几种提议的自动BCS系统,但是没有一个在此持续时间内监视BCS的逐渐变化。这些逐渐的变化可以推断出大量有益且即时的信息,可以对每头被监测的母牛的健康状况进行分析。第三个系统专注于使用Haar级联分类器自动检测奶牛特征,以检测解剖特征。这些特征包括母牛身体的尾巴,臀部和后部区域。这样做是为了帮助机器视觉应用程序确定图像或视频帧中是否存在母牛以及在何处存在母牛。一旦检测到母牛,就必须对其进行自动识别,以保持系统完全自动化。在本研究中,还以基于机器视觉的方法对其进行了研究,作为与母牛检测结合的补充方面。这样的系统有可能赶上早期发展起来的不良健康状况,帮助平衡个体母牛的饮食,并帮助农场管理以适当和有效的方式更好地促进资源,金钱和其他方面的发展。还讨论了这项研究的几种不同应用,以及未来的研究方向,包括潜在的其他自动化精密奶牛养殖技术,将其中许多技术集成到统一系统中以及使用替代的,可能更强大的机器视觉相机。关键字:机器视觉,结构化照明,Haar级联分类器,光流,精密奶牛场。

著录项

  • 作者

    Shelley, Anthony Neal.;

  • 作者单位

    University of Kentucky.;

  • 授予单位 University of Kentucky.;
  • 学科 Electrical engineering.;Food science.;Animal sciences.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 251 p.
  • 总页数 251
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:47:10

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