Paper
19 January 2009 Characterization of three algorithms for detecting surface flatness defects from dense point clouds
Pingbo Tang, Burcu Akinci, Daniel Huber
Author Affiliations +
Proceedings Volume 7239, Three-Dimensional Imaging Metrology; 72390N (2009) https://doi.org/10.1117/12.805727
Event: IS&T/SPIE Electronic Imaging, 2009, San Jose, California, United States
Abstract
Surface flatness assessment is required for controlling the quality of various products, such as building and mechanical components. During such assessments, inspectors collect data capturing surface shape, and use it to identify flatness defects, which are surface parts deviating from a reference plane by more than the tolerance. Laser scanners can deliver accurate and dense 3D point clouds capturing detailed surface shape for flatness defect detection in minutes. However, few studies explore algorithms for detecting surface flatness defects from dense point clouds, and provide quantitative analysis of defect detection performance. This paper presents three surface-flatness-defect detection algorithms and our experimental investigations for characterizing their performances. We created a test bed, which is composed of several flat boards with defects of various sizes on them, and tested two scanners and three algorithms using it. The results are reported in the form of a set of performance maps indicating under which conditions (using which scanner, scanning distance, selected defect detection algorithm, and angular resolution of the scanner, etc.), what types of defects are detected. Our analysis shows that scanning distance and angular resolution substantially influence the detection accuracy. Comparative analyses of scanners and defect detection algorithms are also presented.
© (2009) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Pingbo Tang, Burcu Akinci, and Daniel Huber "Characterization of three algorithms for detecting surface flatness defects from dense point clouds", Proc. SPIE 7239, Three-Dimensional Imaging Metrology, 72390N (19 January 2009); https://doi.org/10.1117/12.805727
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CITATIONS
Cited by 16 scholarly publications.
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KEYWORDS
Defect detection

Scanners

Detection and tracking algorithms

Clouds

Spatial resolution

Gaussian filters

Image filtering

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