Incorporating computed tomography (CT) reconstruction operators into differentiable pipelines has proven beneficial in many applications. Such approaches usually focus on the projection data and keep the acquisition geometry fixed. However, precise knowledge of the acquisition geometry is essential for high quality reconstruction results. In this paper, the differentiable formulation of fan-beam CT reconstruction is extended to the acquisition geometry. This allows to propagate gradient information from a loss function on the reconstructed image into the geometry parameters. As a proof-of-concept experiment, this idea is applied to rigid motion compensation. The cost function is parameterized by a trained neural network which regresses an image quality metric from the motion affected reconstruction alone. Using the proposed method, we are the first to optimize such an autofocus-inspired algorithm based on analytical gradients. The algorithm achieves a reduction in MSE by 35.5 % and an improvement in SSIM by 12.6 % over the motion affected reconstruction. Next to motion compensation, we see further use cases of our differentiable method for scanner calibration or hybrid techniques employing deep models.
翻译:将计算成的透视(CT)重建操作者纳入不同的管道,已证明在许多应用中都是有益的。这些方法通常侧重于预测数据,并固定获取几何。然而,精确了解获取几何对于高质量的重建结果至关重要。在本文中,粉丝光束重建的不同配方扩大到获取几何。这样可以将重塑图像的损失函数中的梯度信息传播到几何参数中。作为概念的验证实验,这一想法适用于僵硬的动作补偿。成本功能由经过训练的神经网络进行参数化,该神经网络仅从运动影响重建的重建中反射图像质量指标。我们首先使用拟议方法优化这种基于分析梯度的自动点感动算法。算法使MSE减少35.5%,使SSIM在运动影响重建后得到改进12.6%。接下来是运动补偿,我们看到我们使用深模型进行扫描扫描校准或混合技术的不同方法的例子。