Overview
FrançaisABSTRACT
Industrial X-ray computed tomography has proven its value as a non-destructive method for inspecting light metal castings. However, tomographic volumes are prone to artifacts that can be mistaken for defects by conventional segmentation algorithms. An automatic approach has been developed with a three-step pipeline: (1) 2D segmentation of CT slices with deep neural U-Net network to detect suspicious discontinuities; (2) classification of these discontinuities into true defects or false alarms , using a trained convolutional neural network classifier; (3) localization of the validated defects in 3D.
The choice of each model and training results are discussed, as well as the performances in terms of probability of detection and false alarms rate.
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Read the articleAUTHORS
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Valérie KAFTANDJIAN: University Professor (Vibrations and Acoustics Laboratory Univ Lyon, INSA Lyon, LVA, EA677)
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Abdel Rahman DAKAK: PhD student, (Centre technique des industries de la fonderie (CTIF) and Laboratoire Vibrations et Acoustique, Univ Lyon, INSA Lyon, LVA, EA677)
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Philippe DUVAUCHELLE: Senior Lecturer, (Vibrations and Acoustics Laboratory, Univ Lyon, INSA Lyon, LVA, EA677)
INTRODUCTION
Like radiography, tomography is based on the differential attenuation of X-rays as a function of material density and chemical composition, but it exploits a large number of views taken from different angles by rotating the observed object. The different views enable us to determine the attenuation of each volume element, called a "voxel", and thus to reconstruct the object in three dimensions. Compared with radiography, which produces images of the volume projected onto the detector plane, tomography enables material to be examined in fictitious slices or sections. This avoids the numerous thickness variations and wall projections that are characteristic of radiography, and makes it much easier to recognize the nature of any discontinuities (or defects) present. This makes tomography an ideal tool for part development and expert appraisal. Thanks to the acceleration of computing resources, tomography is beginning to be used in production control.
The question of data interpretation then becomes a crucial issue. Indeed, to examine the entire volume, it is necessary to scroll through 2D virtual sections on the screen, or to use an algorithm enabling 3D representation of the object's volume, and interpreting the entire volume is very cumbersome to do manually. On a production line, automatic data processing is needed to detect discontinuities (such as missing material or inclusions). Such a task can be achieved with noise filtering and adaptive thresholding, but the performance achieved is the result of a compromise between detection of small defects, and detection of false alarms, due in particular to the fact that tomography is subject to reconstruction artifacts. The advent of convolutional neural networks, and the success achieved on natural images by deep networks, suggest that performance should be good in a non-destructive testing situation such as tomography.
This article proposes to demonstrate the usefulness of automatic defect detection methods in industrial tomography images using convolutional neural networks. The target application is aluminum casting, but other fields are possible, provided that a suitable database is defined.
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KEYWORDS
defects | foundry | foundry defects | tomography | detection | neuron network | deep learning
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Automatic detection of tomographic defects using artificial intelligence
Bibliography
- (1) - ASTM International - ASTM E2422-17, Standard Digital Reference Images for Inspection of Aluminum Castings, - ASTM International, West Conshohocken, PA (2017), http://www.astm.org
- (2) - SUN (W.),...
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