Tianyuan Wang, Virginia Florian, Richard Schielein, Christian Kretzer, Stefan Kasperl, Felix Lucka, Tristan van Leeuwen
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引用次数: 0
摘要
稀疏角度 X 射线计算机断层扫描(CT)在工业质量控制中发挥着重要作用,但在扫描时间和重建质量之间存在固有的权衡问题。自适应角度选择策略试图改善这一问题,其依据是被测物体的几何形状会导致信息内容在投影角度上的不均匀分布。深度强化学习(DRL)已成为 X 射线 CT 自适应角度选择的有效方法。以往的研究侧重于使用固定数量的角度来优化通用图像质量度量,而我们的工作则通过考虑特定的下游任务(即基于图像的缺陷检测),并在使用的角度数量上引入灵活性来扩展这些研究。通过利用有关典型缺陷特征的先验知识,我们的任务自适应角度选择方法可根据角度数进行调整,从而轻松检测重建图像中的缺陷。
Task-Adaptive Angle Selection for Computed Tomography-Based Defect Detection.
Sparse-angle X-ray Computed Tomography (CT) plays a vital role in industrial quality control but leads to an inherent trade-off between scan time and reconstruction quality. Adaptive angle selection strategies try to improve upon this based on the idea that the geometry of the object under investigation leads to an uneven distribution of the information content over the projection angles. Deep Reinforcement Learning (DRL) has emerged as an effective approach for adaptive angle selection in X-ray CT. While previous studies focused on optimizing generic image quality measures using a fixed number of angles, our work extends them by considering a specific downstream task, namely image-based defect detection, and introducing flexibility in the number of angles used. By leveraging prior knowledge about typical defect characteristics, our task-adaptive angle selection method, adaptable in terms of angle count, enables easy detection of defects in the reconstructed images.