@inproceedings{476e0a0e9d5c4ae0ac9114d2e462e664,
title = "Low-dose CT reconstruction based on multiscale dictionary",
abstract = "Statistical CT reconstruction using penalized weighted least-squares(PWLS) criteria can improve image-quality in low-dose CT reconstruction. A suitable design of regularization term can benefit it very much. Recently, sparse representation based on dictionary learning has been treated as the regularization term and results in a high- quality reconstruction. In this paper, we incorporated a multiscale dictionary into statistical CT reconstruction, which can keep more details compared with the reconstruction based on singlescale dictionary. Further more, we exploited reweigted 1 norm minimization for sparse coding, which performs better than 1 norm minimization in locating the sparse solution of underdetermined linear systems of equations. To mitigate the time consuming process that computing the gradiant of regularization term, we adopted the so-called double surrogates method to accelerate ordered-subsets image reconstruction. Experiments showed that combining multiscale dictionary and reweighted 1 norm minimization can result in a reconstruction superior to that bases on singlescale dictionary and 1 norm minimization.",
keywords = "Double surrogates, Multiscale dictionary, Reweighted 1 norm minimization, Singlescale dictionary, Sparsity",
author = "Ti Bai and Xuanqin Mou and Qiong Xu and Yanbo Zhang",
year = "2013",
doi = "10.1117/12.2008140",
language = "英语",
isbn = "9780819494429",
series = "Progress in Biomedical Optics and Imaging - Proceedings of SPIE",
booktitle = "Medical Imaging 2013",
note = "Medical Imaging 2013: Physics of Medical Imaging ; Conference date: 11-02-2013 Through 14-02-2013",
}