Authors
Matthias Joachim Ehrhardt, Pawel J Markiewicz, Carola-Bibiane Schönlieb
Publication date
2019/8/20
Journal
Physics in Medicine & Biology
Publisher
IOP Publishing
Description
Uncompressed clinical data from modern positron emission tomography (PET) scanners are very large, exceeding 350 million data points (projection bins). The last decades have seen tremendous advancements in mathematical imaging tools many of which lead to non-smooth (ie non-differentiable) optimization problems which are much harder to solve than smooth optimization problems. Most of these tools have not been translated to clinical PET data, as the state-of-the-art algorithms for non-smooth problems do not scale well to large data. In this work, inspired by big data machine learning applications, we use advanced randomized optimization algorithms to solve the PET reconstruction problem for a very large class of non-smooth priors which includes for example total variation, total generalized variation, directional total variation and various different physical constraints. The proposed algorithm randomly …
Total citations
2019202020212022202320241411796
Scholar articles