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Main Authors: Green, Calum, Ahmed, Sharif, Marathe, Shashidhara, Perera, Liam, Leonardi, Alberto, Gmyrek, Killian, Dini, Daniele, Houx, James Le
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.07322
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author Green, Calum
Ahmed, Sharif
Marathe, Shashidhara
Perera, Liam
Leonardi, Alberto
Gmyrek, Killian
Dini, Daniele
Houx, James Le
author_facet Green, Calum
Ahmed, Sharif
Marathe, Shashidhara
Perera, Liam
Leonardi, Alberto
Gmyrek, Killian
Dini, Daniele
Houx, James Le
contents 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.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07322
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Three-Dimensional, Multimodal Synchrotron Data for Machine Learning Applications
Green, Calum
Ahmed, Sharif
Marathe, Shashidhara
Perera, Liam
Leonardi, Alberto
Gmyrek, Killian
Dini, Daniele
Houx, James Le
Machine Learning
Image and Video Processing
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.
title Three-Dimensional, Multimodal Synchrotron Data for Machine Learning Applications
topic Machine Learning
Image and Video Processing
url https://arxiv.org/abs/2409.07322