Nanoinformatics 2018
DOI: 10.1007/978-981-10-7617-6_7
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Topological Data Analysis for the Characterization of Atomic Scale Morphology from Atom Probe Tomography Images

Abstract: Atom probe tomography (APT) represents a revolutionary characterization tool for materials that combine atomic imaging with a time-of-flight (TOF) mass spectrometer to provide direct space three-dimensional, atomic scale resolution images of materials with the chemical identities of hundreds of millions of atoms. It involves the controlled removal of atoms from a specimen's surface by field evaporation and then sequentially analyzing them with a position sensitive detector and TOF mass spectrometer. A paradox … Show more

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Cited by 3 publications
(4 citation statements)
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References 59 publications
(58 reference statements)
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“…Persistent homology (PH) is the most commonly used method in TDA, which captures topological features in the high-dimensional data, such as connected components, loops, and holes, at multiple scales. All TDA methods treat high-dimension data as a point cloud 26 31 . PH maps a set X of points in the high-dimensional space associated with a distance function.…”
Section: Computational Detailsmentioning
confidence: 99%
“…Persistent homology (PH) is the most commonly used method in TDA, which captures topological features in the high-dimensional data, such as connected components, loops, and holes, at multiple scales. All TDA methods treat high-dimension data as a point cloud 26 31 . PH maps a set X of points in the high-dimensional space associated with a distance function.…”
Section: Computational Detailsmentioning
confidence: 99%
“…We can then compute the loglikelihood of the measurement (equation 11). If the loglikelihood is increasing, we can iterate, using f i in place off i to compute the kernel ( equations 19,18 ), then using equations 20,21 to update f i again, until the maximum log-likelihood is found. By this iterative scheme we find a smoothed concentration field f i which preserves the atom count and maximises the likelihood of having measured f i .…”
Section: A a Maximum Likelihood Denoising (Mld) Filter For Voxelisinmentioning
confidence: 99%
“…* daniel.mason@ukaea.uk Methods related to topology have previously been applied in APM, to define clusters [14] and for the analysis of segregation [15]. Measurements of the topology have been made using the Euler characteristic for spinodal decomposition [16] as well as for feature extraction [17,18].…”
Section: Introductionmentioning
confidence: 99%
“…There are many examples of this, such as the analysis of hyperspectral image data obtained by transmission electron microscopy, 42,43 and topological data analysis of atom probe tomography images. 44 A high-throughput synthesis (thin films) and characterization approach with composition and temperature gradients across the substrate has been systematically conducted and the outputs are stored in the highthroughput experimental materials (HTEMs) database (www.htem.nrel.gov). 45 Linking such data to theory and the related assessment of accuracy of measurements in HTS can help in making combinatorial libraries become a source of generating reference data.…”
Section: Experimental Big Data Analysis and Databasesmentioning
confidence: 99%