I-DCGAN and TOPSIS-IFP: A simulation generation model for radiographic flaw detection images in light alloy castings and an algorithm for quality evaluation of generated images

The intelligent detection technology driven by X-ray images and deep learning represents the forefront of advanced techniques and development trends in flaw detection and automated evaluation of light alloy castings. However, the efficacy of deep learning models hinges upon a substantial abundance o...

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Veröffentlicht in:China foundry 2024-05, Vol.21 (3), p.239-247
Hauptverfasser: Hou, Ming-jun, Dong, Hao, Ji, Xiao-yuan, Zou, Wen-bing, Xia, Xiang-sheng, Li, Meng, Yin, Ya-jun, Li, Bao-hui, Chen, Qiang, Zhou, Jian-xin
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container_issue 3
container_start_page 239
container_title China foundry
container_volume 21
creator Hou, Ming-jun
Dong, Hao
Ji, Xiao-yuan
Zou, Wen-bing
Xia, Xiang-sheng
Li, Meng
Yin, Ya-jun
Li, Bao-hui
Chen, Qiang
Zhou, Jian-xin
description The intelligent detection technology driven by X-ray images and deep learning represents the forefront of advanced techniques and development trends in flaw detection and automated evaluation of light alloy castings. However, the efficacy of deep learning models hinges upon a substantial abundance of flaw samples. The existing research on X-ray image augmentation for flaw detection suffers from shortcomings such as poor diversity of flaw samples and low reliability of quality evaluation. To this end, a novel approach was put forward, which involves the creation of the Interpolation-Deep Convolutional Generative Adversarial Network (I-DCGAN) for flaw detection image generation and a comprehensive evaluation algorithm named TOPSIS-IFP. I-DCGAN enables the generation of high-resolution, diverse simulated images with multiple appearances, achieving an improvement in sample diversity and quality while maintaining a relatively lower computational complexity. TOPSIS-IFP facilitates multi-dimensional quality evaluation, including aspects such as diversity, authenticity, image distribution difference, and image distortion degree. The results indicate that the X-ray radiographic images of magnesium and aluminum alloy castings achieve optimal performance when trained up to the 800th and 600th epochs, respectively. The TOPSIS-IFP value reaches 78.7% and 73.8% similarity to the ideal solution, respectively. Compared to single index evaluation, the TOPSIS-IFP algorithm achieves higher-quality simulated images at the optimal training epoch. This approach successfully mitigates the issue of unreliable quality associated with single index evaluation. The image generation and comprehensive quality evaluation method developed in this paper provides a novel approach for image augmentation in flaw recognition, holding significant importance for enhancing the robustness of subsequent flaw recognition networks.
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source Alma/SFX Local Collection; SpringerLink Journals - AutoHoldings
subjects Algorithms
Alloys
Engineering
Machines
Magnesium castings
Manufacturing
Materials Engineering
Metallic Materials
Processes
Quality management
Research & Development
Specialty metals industry
title I-DCGAN and TOPSIS-IFP: A simulation generation model for radiographic flaw detection images in light alloy castings and an algorithm for quality evaluation of generated images
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