On the Atoms of Robustness

Robust Matrix Decomposition for Spectral Imaging

Master Thesis (2021)
Author(s)

R.A.R. Moens (TU Delft - Aerospace Engineering)

Contributor(s)

R Van de Plas – Mentor (TU Delft - Team Raf Van de Plas)

B. Brandl – Mentor (TU Delft - Astrodynamics & Space Missions)

Faculty
Mechanical Engineering
Copyright
© 2021 Roger Moens
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 Roger Moens
Graduation Date
30-04-2021
Awarding Institution
Delft University of Technology
Programme
['Aerospace Engineering', 'Mechanical Engineering | Systems and Control']
Faculty
Mechanical Engineering
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Abstract

Modern imaging modalities across many application domains increasingly acquire a large number of very high-dimensional measurements, commonly collecting hundreds to millions of variables per spatial resolution element. That high-dimensional nature can severely challenge traditional (often Euclidean distance based) approaches to noise and dimensionality reduction. Furthermore, statistical analysis of such data is often hampered by the curse of dimensionality, concomitant with large numbers of pixels and channels, by the growing abundance of low signal-to-noise ratio (SNR) measurements, and by the detrimental effects of noise accumulation. It is therefore necessary to find efficient means of reducing high-dimensional (and large data size) measurement sets to a lower-dimensional representation while incurring minimal information loss. Addressing this challenge is essential (a) to enable processing of the massively multivariate measurement sets acquired by several promising imaging technologies today (commonly hundreds of gigabytes to terabytes per experiment), (b) to avoid that computational analysis becomes a bottleneck for the development of new instrumental capabilities, with hardware setups theoretically capable of yielding terabyte to petabyte imaging but currently considered impractical, and (c) to enable archiving massively multivariate measurement sets, often required to be stored for several years and containing information suitable for additional science projects. This thesis focuses on this challenge specifically. First, it explores structured and regularized matrix decomposition methods based on the l1-norm, e.g. building on principal component pursuit (PCP), to address this challenge. Second, it delivers custom implementations of these methods. Third, it develops and implements an application-driven framework for automatic setting of hyperparameters. Finally, it applies and compares these methods using several spectral imaging case studies spanning both very small scales, in molecular imaging of organic tissue, as well as very large scales, in the spectroscopic imaging of Outer space.

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