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Generating Meaningful Synthetic Ground Truth for Pore Detection in Cast Aluminum Parts
Labeling a data set is a tedious task, especially when identifying small pores in an artifact-prone three-dimensional computed tomography (CT) scan of a die cast. Modern deep learning algorithms have the ability to increase the quality and speed of automated inspection. However, they crave vast amou...
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Published in: | E-journal of Nondestructive Testing 2019-03, Vol.24 (3) |
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Main Authors: | , , , |
Format: | Article |
Language: | English |
Citations: | Items that cite this one |
Online Access: | Get full text |
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Summary: | Labeling a data set is a tedious task, especially when identifying small pores in an artifact-prone three-dimensional computed
tomography (CT) scan of a die cast. Modern deep learning algorithms have the ability to increase the quality and speed of
automated inspection. However, they crave vast amounts of labeled data. Thus, we demonstrate a method to simulate a realistic
CT-data set which allows ground truth labels to be derived automatically. We place procedurally generated pores inside lifelike
material samples, yielding virtual aluminum parts. Using properties of real materials during the simulation, we are able to
create scans comprising the typical CT-artifacts which impede the detection of defects, especially noise, beam hardening, and
ring artifacts. To validate the realism of this data set, we use the simulated data to train different defect detection algorithms,
including convolutional neural networks, and measure their prediction performance on real data showing the aforementioned
artifacts. The corresponding ground truth labeling was derived from scans of higher quality of the same parts. |
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ISSN: | 1435-4934 1435-4934 |
DOI: | 10.58286/23730 |