Distributed Stochastic Optimization of a Neural Representation Network for Time-Space Tomography Reconstruction
K. Aditya Mohan, Massimiliano Ferrucci, Chuck Divin, Garrett A., Stevenson, Hyojin Kim

TL;DR
This paper introduces a distributed stochastic neural network approach for 4D time-space reconstruction in X-ray CT, enabling accurate dynamic object imaging with reduced memory and computational requirements.
Contribution
It proposes a novel distributed implicit neural representation and stochastic training algorithm for efficient 4D CT reconstruction of dynamic objects.
Findings
Outperforms traditional static reconstruction methods in dynamic scenarios.
Reduces memory and compute by propagating through fewer object coordinates.
Demonstrates high-fidelity reconstructions on simulated and real datasets.
Abstract
4D time-space reconstruction of dynamic events or deforming objects using X-ray computed tomography (CT) is an important inverse problem in non-destructive evaluation. Conventional back-projection based reconstruction methods assume that the object remains static for the duration of several tens or hundreds of X-ray projection measurement images (reconstruction of consecutive limited-angle CT scans). However, this is an unrealistic assumption for many in-situ experiments that causes spurious artifacts and inaccurate morphological reconstructions of the object. To solve this problem, we propose to perform a 4D time-space reconstruction using a distributed implicit neural representation (DINR) network that is trained using a novel distributed stochastic training algorithm. Our DINR network learns to reconstruct the object at its output by iterative optimization of its network parameters…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Medical Imaging Techniques and Applications · Electrical and Bioimpedance Tomography
MethodsSparse Evolutionary Training
