A Deep Learning Approach for Defect Detection and Segmentation in X-Ray Computed Tomography Slices of Additively Manufactured Components

P. Acharya, Tsuchin P. Chu, Khaled R. Ahmed, S. Kharel
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Abstract

Additive manufacturing is an emerging and crucial technology that can overcome the limitations of traditional manufacturing techniques to accurately manufacture highly complex parts. X-ray Computed Tomography (XCT) is a widely used method for non-destructive testing of AM parts. However, detection and segmentation of defects in XCT images of AM have many challenges due to contrast, size, and appearance of defects. This study developed deep learning techniques for detecting and segmenting defects in XCT images of AM. Due to a large number of required defect annotations, this paper applied image processing techniques to automate the defect labeling process. A single-stage object detection algorithm (YOLOv5) was applied to the problem of defect detection in image data. Three different variants of YOLOv5 were implemented and their performances were compared. U-Net was applied for defect segmentation in XCT slices. Finally, this research demonstrates that deep learning techniques can improve the automatic defect detection and segmentation in XCT data of AM.
基于深度学习的增材制造部件x射线计算机断层扫描缺陷检测与分割方法
增材制造是一项新兴的关键技术,它可以克服传统制造技术的局限性,精确制造高度复杂的零件。x射线计算机断层扫描(XCT)是一种广泛应用于增材制造零件无损检测的方法。然而,由于缺陷的对比度、大小和外观,在增材制造的XCT图像中检测和分割缺陷存在许多挑战。本研究开发了深度学习技术来检测和分割AM的XCT图像缺陷。由于需要进行大量的缺陷标注,本文采用图像处理技术实现缺陷标注过程的自动化。将单阶段目标检测算法(YOLOv5)应用于图像数据的缺陷检测问题。实现了三种不同的YOLOv5变体,并比较了它们的性能。采用U-Net对XCT切片进行缺陷分割。最后,本文的研究表明,深度学习技术可以提高AM的XCT数据的缺陷自动检测和分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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