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Machine Vision Techniques for Crane Workspace Mapping.

机译:起重机工作区映射的机器视觉技术。

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摘要

Cranes are used worldwide for transportation and material handling in a variety of industries and facilities, including manufacturing industries, shipyards, and warehouses. Safety and efficiency in crane operations are a concern, since these issues are closely related to productivity. One of the reasons for crane-related accidents is mistakes by the operator, some of which can be attributed to the limitations of the operator's field of view, depth perception, and knowledge of the workspace. These limitations are exacerbated by the dynamic environment of the workspace. One possible solution to these problems could be aiding the operator with a dynamic map of the workspace that shows the position of obstacles within it. In this thesis, two methods for mapping the crane workspace in near-realtime using computer vision are introduced. Several computer vision algorithms are integrated, and new techniques are introduced to generate a machine-vision-based map. A QR code-based mapping algorithm is also formulated. The algorithms can work independently. However, they can also be integrated, and the results show that a combination of these two mapping techniques produce the best results. The success of the pure machine-vision-based map and the QR code-based map depend on successful segmentation of color regions and detection of the QR codes, respectively. The combination of the two algorithms is a novel approach that ensures maximum obstacle detection. The algorithms produce a workspace map that can help the crane operator drive the crane more safely and efficiently.
机译:起重机在全球范围内用于各种行业和设施的运输和物料搬运,包括制造业,造船厂和仓库。起重机操作中的安全性和效率令人担忧,因为这些问题与生产率密切相关。起重机相关事故的原因之一是操作员的错误,其中一些原因可归因于操作员视野,深度感知和工作空间知识的局限性。工作空间的动态环境加剧了这些限制。解决这些问题的一种可能的解决方案是,为操作员提供工作空间的动态地图,该地图显示其中的障碍物位置。本文介绍了两种利用计算机视觉近距离绘制起重机工作空间的方法。集成了几种计算机视觉算法,并引入了新技术来生成基于机器视觉的地图。还制定了基于QR码的映射算法。这些算法可以独立工作。但是,它们也可以集成,结果表明这两种映射技术的组合产生了最佳结果。纯基于机器视觉的地图和基于QR码的地图的成功分别取决于成功的颜色区域分割和QR码的检测。两种算法的结合是一种确保最大障碍物检测的新颖方法。该算法生成一个工作区图,可以帮助起重机操作员更安全,更有效地驾驶起重机。

著录项

  • 作者

    Rahman, Mohammad Sazzad.;

  • 作者单位

    University of Louisiana at Lafayette.;

  • 授予单位 University of Louisiana at Lafayette.;
  • 学科 Mechanical engineering.;Industrial engineering.;Computer science.
  • 学位 M.S.
  • 年度 2015
  • 页码 97 p.
  • 总页数 97
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:52:27

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