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Yoo, Jaejun
Lab. of Advanced Imaging Technology
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A MATHEMATICAL FRAMEWORK FOR DEEP LEARNING IN ELASTIC SOURCE IMAGING

Author(s)
Yoo, JaejunWahab, AbdulYe, Jong Chul
Issued Date
2018-10
DOI
10.1137/18M1174027
URI
https://scholarworks.unist.ac.kr/handle/201301/53571
Fulltext
https://epubs.siam.org/doi/10.1137/18M1174027
Citation
SIAM JOURNAL ON APPLIED MATHEMATICS, v.78, no.5, pp.2791 - 2818
Abstract
An inverse elastic source problem with sparse measurements is our concern. A generic mathematical framework is proposed which extends a low-dimensional manifold regularization in the conventional source reconstruction algorithms thereby enhancing their performance with sparse data-sets. It is rigorously established that the proposed framework is equivalent to the so-called deep convolutional framelet expansion in machine learning literature for inverse problems. Apposite numerical examples are furnished to substantiate the efficacy of the proposed framework.
Publisher
SIAM PUBLICATIONS
ISSN
0036-1399
Keyword (Author)
elasticity imaginginverse source problemdeep learningconvolutional neural networkdeep convolutional frameletstime-reversal
Keyword
LOW-DOSE CTCONVOLUTIONAL NEURAL-NETWORKTIME-REVERSAL ALGORITHMSRECONSTRUCTIONFRAMELETS

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