Max MignotteJean MeunierJean‐Paul Soucy
This paper introduces a simple algorithm for tomographic reconstruction based on the use of a complexity regularization term. The regularization is formulated in the discrete cosine transform (DCT) domain by promoting a low-noise reconstruction having a high sparsity in the frequency domain. The resulting algorithm simply alternates between a maximum-likelihood (ML) expectation-maximization (EM) update and a decreasing sparsity constraint in the DCT domain. Applications to SPECT reconstruction and comparisons with a classical estimator using the best available regularization terms are given in order to illustrate the potential of our reconstruction technique.
A. GopinathGuoliang XuDavid RessOzan ÖktemSriram SubramaniamChandrajit Bajaj
Eduardo X. MiquelesPatricio Guerrero
Ezgi Demircan-TüreyenMustafa E. Kamaşak
Jiahan ZhangSi LiYuesheng XuC. Ross SchmidtleinEdward D. LipsonDavid FeiglinAndrzej Król