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Deep learning tomographic reconstruction through hierarchical decomposition of domain transforms

作     者:Lin Fu Bruno De Man 

作者机构:GE ResearchNY 12309 NiskayunaUSA 

出 版 物:《Visual Computing for Industry,Biomedicine,and Art》 (工医艺的可视计算(英文))

年 卷 期:2022年第5卷第1期

页      面:365-377页

核心收录:

学科分类:1002[医学-临床医学] 0808[工学-电气工程] 07[理学] 0701[理学-数学] 0812[工学-计算机科学与技术(可授工学、理学学位)] 070101[理学-基础数学] 

基  金:Research reported in this publication was partially supported by NIH,Nos.R01EB031102,R01HL151561,and R01CA233888 The content is solely the responsibility of the authors and does not necessarily represent the official views of the NIH 

主  题:Computed tomography Image reconstruction Deep learning Hierarchical 

摘      要:Deep learning(DL)has shown unprecedented performance for many image analysis and image enhancement ***,solving large-scale inverse problems like tomographic reconstruction remains challenging for *** problems involve non-local and space-variant integral transforms between the input and output domains,for which no efficient neural network models are readily available.A prior attempt to solve tomographic reconstruction problems with supervised learning relied on a brute-force fully connected network and only allowed reconstruction with a 128^(4)system matrix *** cannot practically scale to realistic data sizes such as 512^(4)and 512^(6)for three-dimensional *** we present a novel framework to solve such problems with DL by casting the original problem as a continuum of intermediate representations between the input and output *** original problem is broken down into a sequence of simpler transformations that can be well mapped onto an efficient hierarchical network architecture,with exponentially fewer parameters than a fully connected network would *** applied the approach to computed tomography(CT)image reconstruction for a 5124 system matrix *** work introduces a new kind of data-driven DL solver for full-size CT reconstruction without relying on the structure of direct(analytical)or iterative(numerical)inversion *** work presents a feasibility demonstration of full-scale learnt reconstruction,whereas more developments will be needed to demonstrate superiority relative to traditional reconstruction *** proposed approach is also extendable to other imaging problems such as emission and magnetic resonance *** broadly,hierarchical DL opens the door to a new class of solvers for general inverse problems,which could potentially lead to improved signal-to-noise ratio,spatial resolution and computational efficiency in various areas.

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