Отрывок: Conv Net 1 and Conv Net 2 is a simple stacked convolutional neural network that allows to make local interpolation in Fourier space be- fore U-Net and after U-Net, which improves results. Conv nets outputs are also normalized by pixel-by-pixel trained normalization FT Mul and FT Mul 2, the same as FT Mul 3. Normalization FT Mul and FT Mul 2 are needed to weaken convolutional neural network artifacts that arise due to nonzero values of the Fourier transform ...
Название : Neural network regularization in the problem of few-view computed tomography
Авторы/Редакторы : Yamaev, A.V.
Chukalina, M.V.
Nikolaev, D.P.
Kochiev, L.G.
Chulichkov, A.I.
Ключевые слова : computed tomography
artificial intelligence
few-view tomography
neural network
U-Net
learned residual fourier reconstruction
Дата публикации : Июн-2022
Издательство : Самарский национальный исследовательский университет
Библиографическое описание : Yamaev AV, Chukalina MV, Nikolaev DP, Kochiev LG, Chulichkov AI. Neural network regularization in the problem of few-view computed tomography. Computer Optics 2022; 46(3): 422-428. DOI: 10.18287/2412-6179-CO-1035.
Серия/номер : 46;3
Аннотация : The computed tomography allows to reconstruct the inner morphological structure of an object without physical destructing. The accuracy of digital image reconstruction directly depends on the measurement conditions of tomographic projections, in particular, on the number of recorded projections. In medicine, to reduce the dose of the patient load there try to reduce the number of measured projections. However, in a few-view computed tomography, when we have a small number of projections, using standard reconstruction algorithms leads to the reconstructed images degradation. The main feature of our approach for few-view tomography is that algebraic reconstruction is being finalized by a neural network with keeping measured projection data because the additive result is in zero space of the forward projection operator. The final reconstruction presents the sum of the additive calculated with the neural network and the algebraic reconstruction. First is an element of zero space of the forward projection operator. The second is an element of orthogonal addition to the zero space. Last is the result of applying the algebraic reconstruction method to a few-angle sinogram. The dependency model between elements of zero space of forward projection operator and algebraic reconstruction is built with neural networks. It demonstrated that realization of the suggested approach allows achieving better reconstruction accuracy and better computation time than state-of-the-art approaches on test data from the Low Dose CT Challenge dataset without increasing reprojection error.
URI (Унифицированный идентификатор ресурса) : https://dx.doi.org/10.18287/2412-6179-CO-1035
http://repo.ssau.ru/handle/Zhurnal-Komputernaya-optika/Neural-network-regularization-in-the-problem-of-fewview-computed-tomography-103040
Другие идентификаторы : Dspace\SGAU\20230413\103040
Dspace\SGAU\20230426\103040
Dspace\SGAU\20230503\103040
Располагается в коллекциях: Журнал "Компьютерная оптика"

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