Abstract
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 cloud11PC: point cloud, PCA: principal component analysis, CAD: computer-aided design, ROC: receiving operating characteristic, TP: true positives, FP: false positive, FN: false negative, TPR: true positive rate, TNR: true negative rate, SVM: support vector machine, CV: cross validation. (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.
Highlights
Quality control is an essential part of all successful manufacturing operations, with the requirement for 100% inspection of manufactured items being common place in many industries
This paper addresses the problem of abnormality detection on freeform metal surfaces using point cloud1 (PC) generated from a robot mounted laser scanner
Regarding the proposed supervised technique, according to the results shown in Section 4.2.3, the unsupervised thresholding strategy that was applied initially on the curved objects data found a set of suspicious points that included some normal points (FP) besides the abnormal points (TP)
Summary
Quality control is an essential part of all successful manufacturing operations, with the requirement for 100% inspection of manufactured items being common place in many industries. Early detection of such abnormalities has an important impact on the operation of critical components subjected to high stress, such rotating power generation components, where regular inspections are carried out at time of manufacturing, and at regular intervals, to ensure reliable operation. Such inspections are carried out by a human expert; while the human is effective at locating abnormalities, they are subject to limitations in accuracy, consistency, speed and reliability. Strong motivation towards the automation of such surface inspection tasks has resulted in a range of different machine based inspection technologies
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