Trajectory optimization for few-view robot-based CT: Transitioning from static to object-specific acquisition geometries

Maximilian Linde , Wolfram Wiest , Anna Trauth , Markus G.R. Sause
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Abstract

The advent of robot-based computed tomography systems accelerated the development of trajectory optimization methodologies, with the objective of achieving superior image quality compared to standard trajectories while maintaining the same or even fewer number of required projections. The application of standard trajectories is not only inefficient due to the lack of integration of available prior knowledge about the object under investigation but also suboptimal because of limited accessibility issues during scans of large components, which are common in robot-based computed tomography. In this work, we introduce an object-specific trajectory optimization technique for few-view applications, based on a 3D Radon space analysis using a RANSAC algorithm. In contrast to existing methods, this approach allows for object geometry specific projection views, which are no longer constrained by discretized initial view sets on predefined acquisition geometries. In addition to eliminating the effects of discretized initial sets, this technique offers a distinct advantage in scenarios of limited accessibility by enabling the avoidance of collision elements, unlike trajectory optimizations on predefined acquisition geometries and standard trajectories. Our results show that the presented technology outperforms standard trajectories of evenly distributed projection views on predefined geometries in both ideal accessibility and limited accessibility scenarios. According to the employed geometry-based image quality metrics, our approach allows for reductions of more than 50 % in the number of projection views while maintaining equivalent image quality.
基于少视图机器人CT的轨迹优化:从静态到特定对象采集几何的过渡
基于机器人的计算机断层扫描系统的出现加速了轨迹优化方法的发展,其目标是在保持相同甚至更少的所需投影数量的同时,获得比标准轨迹更好的图像质量。标准轨迹的应用不仅由于缺乏对所研究对象的现有先验知识的整合而效率低下,而且由于在扫描大型部件时有限的可访问性问题而不是最佳的,这在基于机器人的计算机断层扫描中很常见。在这项工作中,我们介绍了一种基于RANSAC算法的3D Radon空间分析的特定对象轨迹优化技术,用于少视图应用。与现有方法相比,该方法允许对象几何形状特定的投影视图,不再受预定义获取几何形状上离散初始视图集的约束。除了消除离散初始集的影响外,该技术还通过避免碰撞元素,在可访问性有限的情况下提供了明显的优势,不像在预定义的获取几何形状和标准轨迹上进行轨迹优化。我们的研究结果表明,在理想可达性和有限可达性场景下,所提出的技术都优于预定义几何形状上均匀分布的投影视图的标准轨迹。根据所采用的基于几何的图像质量指标,我们的方法允许在保持等效图像质量的同时减少超过50% %的投影视图数量。
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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