基于分解合成法的 CT 检测图像生成研究。

IF 1.7 3区 医学 Q3 INSTRUMENTS & INSTRUMENTATION
Journal of X-Ray Science and Technology Pub Date : 2025-01-01 Epub Date: 2024-12-16 DOI:10.1177/08953996241296249
Jintao Fu, Renjie Liu, Tianchen Zeng, Peng Cong, Ximing Liu, Yuewen Sun
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引用次数: 0

摘要

背景:核石墨和核碳组分是高温气冷堆(HTGR)堆芯的重要结构元件,在中子反射、调节和绝缘中起着至关重要的作用。这些反应器的结构完整性和稳定运行在很大程度上取决于这些部件的质量。螺旋计算机断层扫描(CT)技术为检测和智能识别这些结构中的缺陷提供了一种方法。然而,缺陷数据集的稀缺性由于样本量小和类不平衡限制了基于深度学习的检测算法的性能。目的:考虑到部件实际CT重建图像数量有限,缺陷分布稀疏,本研究旨在通过生成近似CT重建图像来增强缺陷检测训练数据集,解决缺陷检测模型训练中样本量小和类不平衡的挑战。方法:提出了一种新的CT检测图像生成算法——分解合成法(DSM),该算法将图像生成过程分解为模型转换、背景生成和缺陷合成三个步骤。首先,将各种工业部件的STL文件转换为体素数据,进行正演投影和图像重建,得到相应的CT图像。接下来,使用Contour-CycleGAN模型生成与实际CT图像非常相似的合成图像。最后,从现有的缺陷库中随机抽取缺陷,并使用复制-调整-粘贴(CAP)方法将缺陷添加到图像中。这些步骤极大地扩展了训练数据集的图像,这些图像与实际的CT重建非常相似。结果:实验结果验证了所提图像生成方法在缺陷检测任务中的有效性。使用DSM生成的数据集与实际CT图像具有更大的相似性,并且当与原始数据相结合进行训练时,与仅使用原始图像相比,这些数据集提高了缺陷检测的准确性。结论:DSM在解决小样本量和类不平衡的挑战方面显示出希望。未来的研究可以集中在进一步优化生成算法和细化模型结构上,以提高缺陷检测模型的性能和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study on CT detection image generation based on decompound synthesize method.

Background: Nuclear graphite and carbon components are vital structural elements in the cores of high-temperature gas-cooled reactors(HTGR), serving crucial roles in neutron reflection, moderation, and insulation. The structural integrity and stable operation of these reactors heavily depend on the quality of these components. Helical Computed Tomography (CT) technology provides a method for detecting and intelligently identifying defects within these structures. However, the scarcity of defect datasets limits the performance of deep learning-based detection algorithms due to small sample sizes and class imbalance.

Objective: Given the limited number of actual CT reconstruction images of components and the sparse distribution of defects, this study aims to address the challenges of small sample sizes and class imbalance in defect detection model training by generating approximate CT reconstruction images to augment the defect detection training dataset.

Methods: We propose a novel CT detection image generation algorithm called the Decompound Synthesize Method (DSM), which decomposes the image generation process into three steps: model conversion, background generation, and defect synthesis. First, STL files of various industrial components are converted into voxel data, which undergo forward projection and image reconstruction to obtain corresponding CT images. Next, the Contour-CycleGAN model is employed to generate synthetic images that closely resemble actual CT images. Finally, defects are randomly sampled from an existing defect library and added to the images using the Copy-Adjust-Paste (CAP) method. These steps significantly expand the training dataset with images that closely mimic actual CT reconstructions.

Results: Experimental results validate the effectiveness of the proposed image generation method in defect detection tasks. Datasets generated using DSM exhibit greater similarity to actual CT images, and when combined with original data for training, these datasets enhance defect detection accuracy compared to using only the original images.

Conclusion: The DSM shows promise in addressing the challenges of small sample sizes and class imbalance. Future research can focus on further optimizing the generation algorithm and refining the model structure to enhance the performance and accuracy of defect detection models.

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来源期刊
CiteScore
4.90
自引率
23.30%
发文量
150
审稿时长
3 months
期刊介绍: Research areas within the scope of the journal include: Interaction of x-rays with matter: x-ray phenomena, biological effects of radiation, radiation safety and optical constants X-ray sources: x-rays from synchrotrons, x-ray lasers, plasmas, and other sources, conventional or unconventional Optical elements: grazing incidence optics, multilayer mirrors, zone plates, gratings, other diffraction optics Optical instruments: interferometers, spectrometers, microscopes, telescopes, microprobes
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