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首页> 外文期刊>Mechatronics: The Science of Intelligent Machines >Abnormality detection strategies for surface inspection using robot mounted laser scanners
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Abnormality detection strategies for surface inspection using robot mounted laser scanners

机译:机器人安装激光扫描仪表面检测异常检测策略

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摘要

The detection of small surface abnormalities on large complex free-form surfaces represents a significant challenge. Often surfaces abnormalities are less than a millimeter square in area but, must be located on surfaces of multiple meters square. To achieve consistent, cost effective and fast inspection, robotic or automated inspection systems are highly desirable. The challenge with automated inspection systems is to create a robust and accurate system that is not adversely affected by environmental variation. Robot-mounted laser line scanner systems can be used to acquire surface measurements, in the form of a point cloud(1) (PC), from large complex geometries. This paper addresses the challenge of how surface abnormalities can be detected based on PC data by considering two different analysis strategies. First, an unsupervised thresholding strategy is considered, and through an experimental study the factors that affect abnormality detection performance are considered. Second, a robust supervised abnormality detection strategy is proposed. The performance of the proposed robust detection algorithm is evaluated experimentally using a realistic test scenario including a complex surface geometry, inconsistent PC quality and variable PC noise. Test results of the unsupervised analysis strategy shows that besides the abnormality size, the laser projection angle and laser lines spacing play an important role on the performance of the unsupervised detection strategy. In addition, a compromise should be made between the threshold value and the sensitivity and specificity of the results.
机译:大型复杂自由形状表面上的小表面异常的检测代表着显着的挑战。表面的异常常见于区域的毫米广场,但必须位于多米方形的表面上。为实现一致,成本效益和快速检查,机器人或自动检测系统非常可取。自动化检测系统的挑战是创建一种强大而准确的系统,这些系统不会受到环境变异的不利影响。机器人安装的激光线扫描仪系统可用于从大型复杂几何形状的点云(1)(PC)的形式获取表面测量。本文通过考虑两种不同的分析策略,解决了如何根据PC数据检测到表面异常的挑战。首先,考虑无监督的阈值策略,并通过实验研究,考虑影响异常检测性能的因素。其次,提出了一种强大的监督异常检测策略。所提出的鲁棒检测算法的性能是使用包括复杂表面几何形状,不一致的PC质量和可变PC噪声的现实测试场景进行实验评估。无监督分析策略的测试结果表明,除异常尺寸外,激光投影角度和激光线间距对无监督检测策略的性能起着重要作用。另外,应在阈值和结果的敏感度和敏感度之间进行折衷。

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