In computed tomography (CT), the projection geometry used for data acquisition needs to be known precisely to obtain a clear reconstructed image. Rigid patient motion is a cause for misalignment between measured data and employed geometry. Commonly, such motion is compensated by solving an optimization problem that, e.g., maximizes the quality of the reconstructed image with respect to the projection geometry. So far, gradient-free optimization algorithms have been utilized to find the solution for this problem. Here, we show that gradient-based optimization algorithms are a possible alternative and compare the performance to their gradient-free counterparts on a benchmark motion compensation problem. Gradient-based algorithms converge substantially faster while being comparable to gradient-free algorithms in terms of capture range and robustness to the number of free parameters. Hence, gradient-based optimization is a viable alternative for the given type of problems.
翻译:在计算断层成像学(CT)中,用于数据获取的预测几何需要精确地知道,以获得清晰的重建图像。硬化的病人运动是测量数据与使用几何学之间不匹配的原因。通常,这种运动通过解决一个优化问题得到补偿,例如,在投影几何学方面最大限度地提高重塑图像的质量。迄今为止,已经利用了无梯度优化算法来找到这一问题的解决方案。在这里,我们表明,梯度优化算法是一种可能的替代方法,在基准运动补偿问题上将性能与无梯度对应方进行比较。基于梯度的算法聚集得更快,同时在捕获范围和稳健度与自由参数数量方面与无梯度算法相近。因此,基于梯度优化是给定类型问题的可行替代方法。