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Machine Vision Based Inspection: Case Studies on 2D Illumination Techniques and 3D Depth Sensors.

机译:基于机器视觉的检查:2D照明技术和3D深度传感器的案例研究。

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摘要

This paper investigates two distinct, but related, topics in machine vision. The first is the effect of lighting on the performance of a 2D vision-based inspection system. The lighting component of machine vision has often been overlooked; an attempt was made to quantify the impact on existing machine vision algorithms. The second topic explores the applications of a data-rich 3D vision sensor that is capable of providing depth data in a wide range of ambient lightning conditions for industrial applications. A focus is placed on inspection systems with the depth data provided by the sensor.;The Microsoft KinectRTM is a commercial vision sensor that can simultaneously provide a colour video stream, comparable to current webcam technologies, in addition to a depth stream that provides three-dimensional information of the camera's field of view and is invariant to environmental lighting. An experiment was carried out to characterize the sensor's accuracy and precision, and to evaluate its performance as an inspection system to determine the orientation of a wheel. Tests were also conducted to determine the effect that changes in the physical environment had on performance. These changes included camera height, lighting and surface material. Results of the experiment have shown that the sensor has an average precision of +/-0.12 cm and average accuracy of 0.5 cm, both with less than a 30% change when varying physical features. A discriminant analysis was performed to measure inspection performance, which showed less than 30% change with set separation, but not for set span. No trends were apparent with the change in set span relating to the change in physical features.;Three basic lighting geometries were compared quantitatively based on discriminant analysis in an inspection task that checked for the presence of J-clips on an aluminum carrier. Two different LabVIEWRTM machine vision algorithms were used to evaluate backlight, bright field and dark field illumination on their ability to minimize the span of the pass (clip present) and fail (clip absent) sample sets, as well as maximize the separation between these sample sets. Results showed that there were clear differences in performance with the different lighting geometries, with over a 30% change in performance. Although it has long been accepted that the choice of lighting for machine vision systems is not a trivial exercise, this paper provides a quantitative measure of the impact lighting has on the performance of feature-based machine vision.
机译:本文研究了机器视觉中两个截然不同但相关的主题。首先是照明对基于2D视觉的检查系统性能的影响。机器视觉的照明组件经常被忽视;试图量化对现有机器视觉算法的影响。第二个主题探讨了数据丰富的3D视觉传感器的应用,该传感器能够在工业应用的各种环境雷电条件下提供深度数据。重点放在具有传感器提供的深度数据的检查系统上; Microsoft KinectRTM是一种商用视觉传感器,除了可以提供与当前网络摄像头技术相当的彩色视频流外,还可以同时提供彩色视频流;摄像机视场的尺寸信息,并且不受环境光照的影响。进行了一项实验,以表征传感器的精度和精确度,并评估其作为检查系统的性能,以确定车轮的方向。还进行了测试以确定物理环境变化对性能的影响。这些变化包括照相机的高度,照明和表面材料。实验结果表明,传感器的平均精度为+/- 0.12 cm,平均精度为0.5 cm,当改变物理特征时,两者的变化均小于30%。进行了判别分析以测量检查性能,该结果表明,设置的间隔变化小于30%,但设置的跨度没有变化。设置范围的变化与物理特征的变化无关,没有明显的趋势。;在检查任务中,基于判别分析,对三种基本照明几何形状进行了定量比较,以检查铝载体上是否存在J形夹。两种不同的LabVIEWRTM机器视觉算法用于评估背光,明场和暗场照明的能力,以最小化通过(存在夹子)和失败(不存在夹子)样本集的跨度,以及最大化这些样本之间的间隔套。结果表明,在不同的照明几何形状下,性能存在明显差异,性能变化超过30%。尽管人们早已接受机器视觉系统照明的选择不是一件容易的事,但本文提供了一种定量的方法来衡量照明对基于特征的机器视觉性能的影响。

著录项

  • 作者

    Yan, Michael T.;

  • 作者单位

    Queen's University (Canada).;

  • 授予单位 Queen's University (Canada).;
  • 学科 Engineering Mechanical.
  • 学位 M.A.Sc.
  • 年度 2012
  • 页码 189 p.
  • 总页数 189
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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