ONIX: An X-ray deep-learning tool for 3D reconstructions from sparse views

Yuhe Zhang, Zisheng Yao, Tobias Ritschel, Pablo Villanueva-Perez
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引用次数: 1

Abstract

Time-resolved three-dimensional (3D) X-ray imaging techniques rely on obtaining 3D information for each time point and are crucial for materials-science applications in academia and industry. Standard 3D X-ray imaging techniques like tomography and confocal microscopy access 3D information by scanning the sample with respect to the X-ray source. However, the scanning process limits the temporal resolution when studying dynamics and is not feasible for many materials-science applications, such as cell-wall rupture of metallic foams. Alternatives to obtaining 3D information when scanning is not possible are X-ray stereoscopy and multi-projection imaging, but these approaches suffer from limited volumetric information as they only acquire a very small number of views or projections compared to traditional 3D scanning techniques. Here, we present optimized neural implicit X-ray imaging (ONIX), a deep-learning algorithm capable of retrieving a continuous 3D object representation from only a small and limited set of sparse projections. ONIX is based on an accurate differentiable model of the physics of X-ray propagation. It generalizes across different instances of similar samples to overcome the limited volumetric information provided by limited sparse views. We demonstrate the capabilities of ONIX compared to state-of-the-art tomographic reconstruction algorithms by applying it to simulated and experimental datasets, where a maximum of eight projections are acquired. ONIX, although it does not have access to any volumetric information, outperforms unsupervised reconstruction algorithms, which reconstruct using single instances without generalization over different instances. We anticipate that ONIX will become a crucial tool for the X-ray community by (i) enabling the study of fast dynamics not possible today when implemented together with X-ray multi-projection imaging and (ii) enhancing the volumetric information and capabilities of X-ray stereoscopic imaging.

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ONIX:用于稀疏视图三维重建的X射线深度学习工具
时间分辨三维(3D)X射线成像技术依赖于获得每个时间点的3D信息,对于学术界和工业界的材料科学应用至关重要。标准的3D X射线成像技术,如断层扫描和共焦显微镜,通过相对于X射线源扫描样品来访问3D信息。然而,在研究动力学时,扫描过程限制了时间分辨率,并且对于许多材料科学应用来说是不可行的,例如金属泡沫的细胞壁破裂。当扫描不可能时,获得3D信息的替代方案是X射线立体成像和多投影成像,但这些方法的体积信息有限,因为与传统的3D扫描技术相比,它们只能获得非常少量的视图或投影。在这里,我们提出了优化的神经隐式X射线成像(ONIX),这是一种深度学习算法,能够仅从一组有限的稀疏投影中检索连续的3D对象表示。ONIX基于X射线传播物理的精确可微模型。它在相似样本的不同实例中进行推广,以克服有限稀疏视图提供的有限体积信息。通过将ONIX应用于模拟和实验数据集,我们展示了其与最先进的断层重建算法相比的能力,其中最多可获得八个投影。ONIX虽然不能访问任何体积信息,但它的性能优于无监督重建算法,后者使用单个实例进行重建,而不会对不同实例进行泛化。我们预计,ONIX将成为X射线界的一个重要工具,它将(i)实现与X射线多投影成像一起实现的快速动力学研究,以及(ii)增强X射线立体成像的体积信息和能力。
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