利用模拟数据进行CT零件缺陷检测的无监督深度学习

Virginia Florian, C. Kretzer, S. Kasperl, Richard Schielein, B. Montavon, R. H. Schmitt
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引用次数: 0

摘要

计算机断层扫描(CT)是一项重要的无损质量控制技术,已在工业上用于缺陷检测。然而,随着质量控制转向全在线检测,需要自动CT分析来满足紧张的生产时间。尽管如此,在产生大量数据的环境中,一个强大的全自动缺陷检测是必不可少的。在过去的几年中,深度学习(DL)已被广泛用于自动执行视觉任务,并鉴于其良好的结果,已成功地应用于CT设置。最近的大部分工作都是基于监督深度学习,通常改编自医学领域的结果。监督式深度学习虽然非常强大,但缺点是需要大量由专家完成的标记数据,并且对所使用的特定数据集有偏见。因此,提出了一种无监督深度学习模型。由自编码器和自回归模型组成的两阶段网络,最初用于图像生成,适用于体分割。该网络是针对铸铝零件缺陷分割的具体任务进行训练的。收集这些零件的CAD模型,得到相应的模拟CT扫描图。结果表明,虽然该结构最初用于数据生成,但可以适用于CT体分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised deep learning for defect detection on CT parts using simulated data
Computed tomography (CT) is a prominent technology for nondestructive quality control and is already used in industry for defect detection. However, as quality control is shifting towards a full in-line inspection, automatic CT analysis is required to meet the tight production time. Nonetheless, in settings where a high amount of data is produced, a robust fully automatic defect detection is essential In the past years, deep learning (DL) has been extensively used to perform vision tasks in an automatic way, and given its promising results, has been successfully applied in CT settings. Most of the recent work is based on supervised DL often adapted from results in the medical field. Supervised DL, although extremely powerful, has the drawbacks of requiring a high amount of labeled data done by experts and is biased to the specific dataset used. Therefore, an unsupervised DL model is presented. A two stages network formed by an auto-encoder and an autoregressive model, originally implemented for image generation, is adapted for volume segmentation. The network is trained on the specific task of defect segmentation of cast aluminum parts. CAD models of such parts are gathered, and corresponding simulated CT scans are acquired. Results show that the architecture, although originally implemented for data generation, can be adapted for CT volume segmentation.
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