Resolution level and reconstruction quality in nano-computed tomography (nano-CT) are in part limited by the stability of microscopes, because the magnitude of mechanical vibrations during scanning becomes comparable to the imaging resolution, and the ability of the samples to resist beam damage during data acquisition. In such cases, there is no incentive in recovering the sample state at different time steps like in time-resolved reconstruction methods, but instead the goal is to retrieve a single reconstruction at the highest possible spatial resolution and without any imaging artifacts. Here we propose a joint solver for imaging samples at the nanoscale with projection alignment, unwarping and regularization. Projection data consistency is regulated by dense optical flow estimated by Farneback's algorithm, leading to sharp sample reconstructions with less artifacts. Synthetic data tests show robustness of the method to Poisson and low-frequency background noise. Applicability of the method is demonstrated on two large-scale nano-imaging experimental data sets.
翻译:纳米合成断层摄影(nano-CT)的分辨率水平和重建质量部分受到显微镜稳定性的限制,因为扫描过程中的机械振动规模与成像分辨率相当,而且样本在获取数据过程中抵抗波束损坏的能力也相当。在这种情况下,没有动力在不同的时间步骤中恢复样本状态,如在时间解析的重建方法中,但目标是在尽可能高的空间分辨率和没有任何成像制品的情况下回收单一的重建。我们在这里提议在纳米尺度上为成像样品提供一个联合解析器,配有投影、无振荡和正规化。预测数据一致性由法奈贝克的算法估计的密集光学流调节,导致用较少的成品进行精锐的采样重建。合成数据测试显示该方法对Poisson和低频背景噪音的稳健性。该方法在两个大型纳米成像实验数据集中显示出适用性。