Calum Green, Sharif Ahmed, Shashidhara Marathe, Liam Perera, Alberto Leonardi, Killian Gmyrek, Daniele Dini, James Le Houx
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引用次数: 0
摘要
机器学习技术正越来越多地应用于医学和物理科学领域的各种成像模式;然而,开发这些工具时的一个重要问题是能否获得高质量的训练数据。在这里,我们展示了一个定制的掺锌沸石 13X 样品的独特、多模态同步加速器数据集,该数据集可用于开发先进的深度学习和数据融合管道。对掺锌沸石 13X 碎片进行了多分辨率显微 X 射线计算机断层成像,以确定其孔隙和特征,然后进行了空间分辨 X 射线衍射计算机断层成像,以确定钠相和锌相的均匀分布特征。对锌的吸收进行了控制,以形成一种简单、空间隔离的两相材料。原始数据和经过处理的数据都以一系列 Zenodo 条目的形式提供。总之,我们提供了一个空间分辨、三维、多模态、多分辨率的数据集,可用于机器学习技术的开发。这些技术包括超分辨率开发、多模态数据融合和三维重建算法开发。
Three-Dimensional, Multimodal Synchrotron Data for Machine Learning Applications
Machine learning techniques are being increasingly applied in medical and
physical sciences across a variety of imaging modalities; however, an important
issue when developing these tools is the availability of good quality training
data. Here we present a unique, multimodal synchrotron dataset of a bespoke
zinc-doped Zeolite 13X sample that can be used to develop advanced deep
learning and data fusion pipelines. Multi-resolution micro X-ray computed
tomography was performed on a zinc-doped Zeolite 13X fragment to characterise
its pores and features, before spatially resolved X-ray diffraction computed
tomography was carried out to characterise the homogeneous distribution of
sodium and zinc phases. Zinc absorption was controlled to create a simple,
spatially isolated, two-phase material. Both raw and processed data is
available as a series of Zenodo entries. Altogether we present a spatially
resolved, three-dimensional, multimodal, multi-resolution dataset that can be
used for the development of machine learning techniques. Such techniques
include development of super-resolution, multimodal data fusion, and 3D
reconstruction algorithm development.