论文标题
层析成像工作流程,以使基于X射线的异物检测能够深入学习
A tomographic workflow to enable deep learning for X-ray based foreign object detection
论文作者
论文摘要
在许多行业分支机构中,在维持生产质量的许多分支中,发现不需要的(“外国”)对象是一个常见程序。 X射线成像是一种快速,非侵入性且广泛适用于异物检测的方法。最近,深度学习是一种强大的方法,用于识别X光片(即X射线图像)中的模式,从而实现了基于X射线的自动外国对象检测。但是,这些方法需要大量的培训示例,并且这些示例的手动注释是一项主观和费力的任务。在这项工作中,我们提出了一种基于计算机断层扫描(CT)的方法,用于生成培训数据,以监督对异物检测的学习,并具有最小的劳动要求。在我们的方法中,在3D中扫描并重建了一些代表性对象。作为CT-SCAN数据的一部分获得的X光片是机器学习方法的输入。异物的高质量地面真相位置是通过准确的3D重建和分段获得的。使用这些分段卷,通过创建虚拟投影获得相应的2D分段。与传统的X光片注释相比,我们以这种方式概述了客观和可重复生成培训数据的好处。此外,我们还展示了准确性如何取决于用于CT重建的对象数量。结果表明,在此工作流程中,通常只需要相对较少的代表性对象(即少于10)才能在工业环境中实现足够的检测性能。此外,对于实际的实验数据,我们表明工作流程导致的外国对象检测精度高于标准X光片注释。
Detection of unwanted (`foreign') objects within products is a common procedure in many branches of industry for maintaining production quality. X-ray imaging is a fast, non-invasive and widely applicable method for foreign object detection. Deep learning has recently emerged as a powerful approach for recognizing patterns in radiographs (i.e., X-ray images), enabling automated X-ray based foreign object detection. However, these methods require a large number of training examples and manual annotation of these examples is a subjective and laborious task. In this work, we propose a Computed Tomography (CT) based method for producing training data for supervised learning of foreign object detection, with minimal labour requirements. In our approach, a few representative objects are CT scanned and reconstructed in 3D. The radiographs that have been acquired as part of the CT-scan data serve as input for the machine learning method. High-quality ground truth locations of the foreign objects are obtained through accurate 3D reconstructions and segmentations. Using these segmented volumes, corresponding 2D segmentations are obtained by creating virtual projections. We outline the benefits of objectively and reproducibly generating training data in this way compared to conventional radiograph annotation. In addition, we show how the accuracy depends on the number of objects used for the CT reconstructions. The results show that in this workflow generally only a relatively small number of representative objects (i.e., fewer than 10) are needed to achieve adequate detection performance in an industrial setting. Moreover, for real experimental data we show that the workflow leads to higher foreign object detection accuracies than with standard radiograph annotation.