Stochastic optimization with randomized smoothing for image registration

Journal Article (2017)
Author(s)

Wei Sun (Erasmus MC, University of Southern California)

Dirk H.J. Poot (Erasmus MC, TU Delft - ImPhys/Quantitative Imaging)

Ihor Smal (Erasmus MC)

Xuan Yang (Shenzhen University)

W. J. Niessen (TU Delft - ImPhys/Quantitative Imaging, Erasmus MC)

S. Klein (Erasmus MC)

Research Group
ImPhys/Quantitative Imaging
Copyright
© 2017 Wei Sun, D.H.J. Poot, Ihor Smal, Xuan Yang, W.J. Niessen, S. Klein
DOI related publication
https://doi.org/10.1016/j.media.2016.07.003
More Info
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Publication Year
2017
Language
English
Copyright
© 2017 Wei Sun, D.H.J. Poot, Ihor Smal, Xuan Yang, W.J. Niessen, S. Klein
Research Group
ImPhys/Quantitative Imaging
Bibliographical Note
Accepted Author Manuscript@en
Volume number
35
Pages (from-to)
146-158
Reuse Rights

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Abstract

Image registration is typically formulated as an optimization process, which aims to find the optimal transformation parameters of a given transformation model by minimizing a cost function. Local minima may exist in the optimization landscape, which could hamper the optimization process. To eliminate local minima, smoothing the cost function would be desirable. In this paper, we investigate the use of a randomized smoothing (RS) technique for stochastic gradient descent (SGD) optimization, to effectively smooth the cost function. In this approach, Gaussian noise is added to the transformation parameters prior to computing the cost function gradient in each iteration of the SGD optimizer. The approach is suitable for both rigid and nonrigid registrations. Experiments on synthetic images, cell images, public CT lung data, and public MR brain data demonstrate the effectiveness of the novel RS technique in terms of registration accuracy and robustness.

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