Stochastic Optimisation Framework using the Core Imaging Library and Synergistic Image Reconstruction Framework for PET Reconstruction
E. Papoutsellis
Casper O. da Costa-Luis
D. Deidda
C. Delplancke
Margaret Duff
Gemma Fardell
Ashley Gillman
Jakob S. Jørgensen
Ž. Kereta
E. Ovtchinnikov
Edoardo Pasca
Georg Schramm
Kris Thielemans

Abstract
We introduce a stochastic framework into the open--source Core Imaging Library (CIL) which enables easy development of stochastic algorithms. Five such algorithms from the literature are developed, Stochastic Gradient Descent, Stochastic Average Gradient (-Am\élior\é), (Loopless) Stochastic Variance Reduced Gradient. We showcase the functionality of the framework with a comparative study against a deterministic algorithm on a simulated 2D PET dataset, with the use of the open-source Synergistic Image Reconstruction Framework. We observe that stochastic optimisation methods can converge in fewer passes of the data than a standard deterministic algorithm.
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