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Presentation
Implementation of automated 3D defect detection for low signal-to noise features in NDE data
AIP Conference Proceedings
  • Robert J. Grandin, Iowa State University
  • Joseph N. Gray, Iowa State University
Document Type
Article
Conference
40th Annual Review of Progress in Quantitative Nondestructive Evaluation
Publication Date
1-1-2014
DOI
10.1063/1.4865047
Conference Title
40th Annual Review of Progress in Quantitative Nondestructive Evaluation
Conference Date
21–26 July 2013
Geolocation
(39.2903848, -76.61218930000001)
Abstract
The need for robust defect detection in NDE applications requires the identification of subtle, low-contrast changes in measurement signals usually in very noisy data. Most algorithms rarely perform at the level of a human inspector and often, as data sets are now routinely 10+ Gigabytes, require laborious manual inspection. We present two automated defect segmentation methods, simple threshold and a binomial hypothesis test, and compare effectiveness of these approaches in noisy data with signal to noise ratios at 1:1. The defect-detection ability of our algorithm will be demonstrated on a 3D CT volume, UT C-scan data, magnetic particle images, and using simulated data generated by XRSIM. The latter is a physics-based forward model useful in demonstrating the effectiveness of data processing approaches in a simulation which includes complex defect geometry and realistic measurement. These large data setsrepresent significant demands on compute resources and easily overwhelm typical PC platforms; however, the emergence of graphics processing units(GPU) processing power provides a means to overcome this bottleneck. Processing large, multi-dimensional datasets requires an optimal GPU implementation which addresses both computational complexity and memory-bandwidth usage.
Comments

The following article appeared in AIP Conference Proceedings 1581 (2014): 1840, and may be found at doi: 10.1063/1.4865047.

Rights
Copyright 2014 American Institute of Physics. This article may be downloaded for personal use only. Any other use requires prior permission of the author and the American Institute of Physics.
Copyright Owner
American Institute of Physics
Language
en
File Format
application/pdf
Citation Information
Robert J. Grandin and Joseph N. Gray. "Implementation of automated 3D defect detection for low signal-to noise features in NDE data" Baltimore, MarylandAIP Conference Proceedings Vol. 1581 (2014) p. 1840 - 1847
Available at: http://works.bepress.com/robert_grandin/10/