Analytical Reconstruction of Periodically Deformed Objects in Time-resolved CT
Journal:
arXiv
Published Date:
Jun 4, 2025
Abstract
Time-resolved CT is an advanced measurement technique that has been widely
used to observe dynamic objects, including periodically varying structures such
as hearts, lungs, or hearing structures. To reconstruct these objects from CT
projections, a common approach is to divide the projections into several
collections based on their motion phases and perform reconstruction within each
collection, assuming they originate from a static object. This describes the
gating-based method, which is the standard approach for time-periodic
reconstruction. However, the gating-based reconstruction algorithm only
utilizes a limited subset of projections within each collection and ignores the
correlation between different collections, leading to inefficient use of the
radiation dose. To address this issue, we propose two analytical reconstruction
pipelines in this paper, and validate them with experimental data captured
using tomographic synchrotron microscopy. We demonstrate that our approaches
significantly reduce random noise in the reconstructed images without blurring
the sharp features of the observed objects. Equivalently, our methods can
achieve the same reconstruction quality as gating-based methods but with a
lower radiation dose. Our code is available at github.com/PeriodRecon.