Deep learning tomographic reconstruction through hierarchical decomposition of domain transforms

被引:0
|
作者
Lin Fu
Bruno De Man
机构
[1] GE Research,
关键词
Computed tomography; Image reconstruction; Deep learning; Hierarchical;
D O I
暂无
中图分类号
学科分类号
摘要
Deep learning (DL) has shown unprecedented performance for many image analysis and image enhancement tasks. Yet, solving large-scale inverse problems like tomographic reconstruction remains challenging for DL. These 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 1284 system matrix size. This cannot practically scale to realistic data sizes such as 5124 and 5126 for three-dimensional datasets. Here 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 domains. The 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 need. We applied the approach to computed tomography (CT) image reconstruction for a 5124 system matrix size. This 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 techniques. This work presents a feasibility demonstration of full-scale learnt reconstruction, whereas more developments will be needed to demonstrate superiority relative to traditional reconstruction approaches. The proposed approach is also extendable to other imaging problems such as emission and magnetic resonance reconstruction. More 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.
引用
收藏
相关论文
共 50 条
  • [21] Defocused Image Deep Learning Designed for Wavefront Reconstruction in Tomographic Pupil Image Sensors
    Suarez Gomez, Sergio Luis
    Garcia Riesgo, Francisco
    Gonzalez Gutierrez, Carlos
    Rodriguez Ramos, Luis Fernando
    Santos, Jesus Daniel
    MATHEMATICS, 2021, 9 (01) : 1 - 15
  • [22] Deep-learning-based image registration for nano-resolution tomographic reconstruction
    Fu, Tianyu
    Zhang, Kai
    Wang, Yan
    Li, Jizhou
    Zhang, Jin
    Yao, Chunxia
    He, Qili
    Wang, Shanfeng
    Huang, Wanxia
    Yuan, Qingxi
    Pianetta, Piero
    Liu, Yijin
    JOURNAL OF SYNCHROTRON RADIATION, 2021, 28 : 1909 - 1915
  • [23] Accurate Stock Price Forecasting Based on Deep Learning and Hierarchical Frequency Decomposition
    Li, Yi
    Chen, Lei
    Sun, Cuiping
    Liu, Guoxu
    Chen, Chunlei
    Zhang, Yonghui
    IEEE ACCESS, 2024, 12 : 49878 - 49894
  • [24] Deep-Interior: A new pathway to interior tomographic image reconstruction via a weighted backprojection and deep learning
    Zhang, Chengzhu
    Chen, Guang-Hong
    MEDICAL PHYSICS, 2024, 51 (02) : 946 - 963
  • [25] Deep learning with domain adaptation for accelerated projection-reconstruction MR
    Han, Yoseob
    Yoo, Jaejun
    Kim, Hak Hee
    Shin, Hee Jung
    Sung, Kyunghyun
    Ye, Jong Chul
    MAGNETIC RESONANCE IN MEDICINE, 2018, 80 (03) : 1189 - 1205
  • [26] System matrix generation for angular domain tomographic reconstruction
    Torres, Veronica C.
    Li, Chengyue
    Brankov, Jovan G.
    Tichauer, Kenneth M.
    ADVANCED BIOMEDICAL AND CLINICAL DIAGNOSTIC AND SURGICAL GUIDANCE SYSTEMS XVIII, 2019, 11229
  • [27] MAP Tomographic Reconstruction with a Spatially Adaptive Hierarchical Image Model
    Nikou, Christophoros
    2017 25TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO), 2017, : 1549 - 1553
  • [28] Deep Learning-Based Tomographic Image Reconstruction with Ultra-Sparse Projection Views
    Shen, L.
    Zhao, W.
    Dai, X.
    Xing, L.
    MEDICAL PHYSICS, 2019, 46 (06) : E436 - E436
  • [29] Deep Into the Domain Shift: Transfer Learning Through Dependence Regularization
    Ma, Shumin
    Yuan, Zhiri
    Wu, Qi
    Huang, Yiyan
    Hu, Xixu
    Leung, Cheuk Hang
    Wang, Dongdong
    Huang, Zhixiang
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2023, 35 (10) : 1 - 15
  • [30] Joint Gaussian dictionary learning and tomographic reconstruction
    Zickert, Gustav
    Oktem, Ozan
    Yarman, Can Evren
    INVERSE PROBLEMS, 2022, 38 (10)