Artículos de revistas
String-averaging expectation-maximization for maximum likelihood estimation in emission tomography
Fecha
2014-04-17Registro en:
Inverse Problems, v.30, n.5, p.055003-1-055003-20, 2014
0266-5611
10.1088/0266-5611/30/5/055003
Autor
Helou Neto, Elias Salomão
Censor, Yair
Chen, Tai-Been
Chern, I-Liang
Pierro, Álvaro Rodolfo De
Jiang, Ming
Horng-Shing Lu, Henry
Institución
Resumen
We study the maximum likelihood model in emission tomography and propose a new family of algorithms for its solution, called string-averaging expectation-maximization (SAEM). In the string-averaging algorithmic regime, the index set of all underlying equations is split into subsets, called 'strings', and the algorithm separately proceeds along each string, possibly in parallel. Then, the end-points of all strings are averaged to form the next iterate. SAEM algorithms with several strings present better practical merits than the classical row-action maximum-likelihood algorithm. We present numerical experiments showing the effectiveness of the algorithmic scheme, using data of image reconstruction problems. Performance is evaluated from the computational cost and reconstruction quality viewpoints. A complete convergence theory is also provided.