A new, fast, relaxation-free, convergent, hessian-based, ordered-subsets algorithm for emission tomography

Ing Tsung Hsiao*, Anand Rangarajan, Parmeshwar Khurd, Gene Gindi

*此作品的通信作者

研究成果: 圖書/報告稿件的類型會議稿件同行評審

摘要

We propose a fast, convergent, positivity preserving, OS-type (ordered-subsets) maximum likelihood (ML) reconstruction algorithm for emission tomography (ET) which takes into account the Hessian information in the ML Poisson objective. In contrast to recent approaches, our proposed algorithm is fundamentally not based on the well known EM-ML algorithm for ET . Our new algorithm is based on an expansion of the ML objective using a second order Taylor series approximation w.r.t. the projection of the source distribution similar to the approach in [1]. Defining the projection of the source as an independent variable, we construct a new objective function in terms of the source distribution and the projection. This new objective function contains the Hessian information of the original Poisson negative log-likelihood. After using a separable surrogates transformation of the new Hessian-based objective, we derive an ordered subsets, positivity preserving algorithm which is guaranteed to asymptotically reach the maximum of the original ET log-likelihood. Preliminary results show that this new algorithm is about as fast as RAMLA [2] after a few initial iterations. However, in contrast to RAMLA, the new algorithm does not require any user-specified, relaxation parameters.

原文英語
主出版物標題2004 2nd IEEE International Symposium on Biomedical Imaging
主出版物子標題Macro to Nano
頁面1408-1411
頁數4
出版狀態已出版 - 2004
事件2004 2nd IEEE International Symposium on Biomedical Imaging: Macro to Nano - Arlington, VA, 美國
持續時間: 15 04 200418 04 2004

出版系列

名字2004 2nd IEEE International Symposium on Biomedical Imaging: Macro to Nano
2

Conference

Conference2004 2nd IEEE International Symposium on Biomedical Imaging: Macro to Nano
國家/地區美國
城市Arlington, VA
期間15/04/0418/04/04

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