论文标题

噪声2窗口:3D计算机断层扫描的快速,自我监督学习和实时重建

Noise2Filter: fast, self-supervised learning and real-time reconstruction for 3D Computed Tomography

论文作者

Lagerwerf, Marinus J., Hendriksen, Allard A., Buurlage, Jan-Willem, Batenburg, K. Joost

论文摘要

在同步子光源的X射线束线上,对物体内部内部的3D断层成像的可实现时间分辨率已减少到一秒钟的一小部分,从而可以检查快速变化的结构。相关的数据采集率需要大量的重建计算资源。因此,通常在扫描完成后执行对象的完整3D重建。 Quasi-3D重建 - 计算几个交互式2D切片而不是3D体积 - 已显示出明显更高的效率,并且可以实现内部的实时重建和可视化。但是,准3D重建依赖于过滤后的反射类型算法,这些算法通常对测量噪声敏感。为了克服此问题,我们提出了noings2filter,这是一种可以仅使用测量数据训练的学习过滤器方法,并且不需要任何其他培训数据。这种方法结合了准3D重建,学习的过滤器和自我监督的学习,以得出一种层析成像重建方法,该方法可以在一分钟内进行一分钟的训练并实时评估。与培训数据相比,我们显示出有限的准确性损失,并且与基于标准滤波器的方法相比,准确性提高了。

At X-ray beamlines of synchrotron light sources, the achievable time-resolution for 3D tomographic imaging of the interior of an object has been reduced to a fraction of a second, enabling rapidly changing structures to be examined. The associated data acquisition rates require sizable computational resources for reconstruction. Therefore, full 3D reconstruction of the object is usually performed after the scan has completed. Quasi-3D reconstruction -- where several interactive 2D slices are computed instead of a 3D volume -- has been shown to be significantly more efficient, and can enable the real-time reconstruction and visualization of the interior. However, quasi-3D reconstruction relies on filtered backprojection type algorithms, which are typically sensitive to measurement noise. To overcome this issue, we propose Noise2Filter, a learned filter method that can be trained using only the measured data, and does not require any additional training data. This method combines quasi-3D reconstruction, learned filters, and self-supervised learning to derive a tomographic reconstruction method that can be trained in under a minute and evaluated in real-time. We show limited loss of accuracy compared to training with additional training data, and improved accuracy compared to standard filter-based methods.

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