Automated Detection of hidden Damages and Impurities in Aluminum Die Casting Materials and Fibre-Metal Laminates using Low-quality X-ray Radiography, Synthetic X-ray Data Augmentation by Simulation, and Machine Learning
Stefan Bosse, Dirk Lehmhus

TL;DR
This paper presents a machine learning approach using synthetic X-ray data and neural networks to detect hidden damages and impurities in aluminum die casting and fibre-metal laminates, aiming for in-field applicability.
Contribution
It introduces a simulation-based data generation method for training robust defect detectors applicable to low-quality X-ray images.
Findings
Synthetic data enables accurate defect labeling.
Neural networks effectively detect damages in low-quality X-ray images.
Method facilitates transition to in-field defect detection technologies.
Abstract
Detection and characterization of hidden defects, impurities, and damages in layered composites like Fibre laminates, e.g., Fibre Metal Laminates (FML), as well as in monolithic materials, e.g., aluminum die casting materials, is still a challenge. This work discusses methods and challenges in data-driven modeling of automated damage and defect detectors using X-ray single- and multi-projection (CT) images. Three main issues are identified: Data and feature variance, data feature labeling (for supervised machine learning), and the missing ground truth. It will be shown that only simulation of data can deliver a ground truth data set and accurate labeling. Noise has significant impact on the feature detection and will be discussed. Data-driven feature detectors are implemented with semantic pixel- or z-profile Convolutional Neural Networks and LSTM Auto-encoders. Data is measured with…
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Taxonomy
TopicsWelding Techniques and Residual Stresses · Non-Destructive Testing Techniques · Advanced X-ray and CT Imaging
MethodsSparse Evolutionary Training · Sigmoid Activation · Tanh Activation · Long Short-Term Memory
