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JOURNALS // Avtomatika i Telemekhanika // Archive

Avtomat. i Telemekh., 2021 Issue 10, Pages 152–164 (Mi at15805)

This article is cited in 2 papers

Neural network for data preprocessing in computed tomography

A. V. Yamaevab, M. V. Chukalinacb, D. P. Nikolaevdb, A. V. Sheshkuseb, A. I. Chulichkova

a Lomonosov Moscow State University, Moscow, 119991 Russia
b Smart Engines Service LLC, Moscow, 117312 Russia
c Federal Research Center “Crystallography and Photonics”, Moscow, 119333 Russia
d Kharkevich Institute for Information Transmission Problems, Russian Academy of Sciences, Moscow, 127051 Russia
e Federal Research Center “Computer Science and Control,” Russian Academy of Sciences, Moscow, 119333 Russia

Abstract: We propose a lightweight noise-canceling filtering neural network that implements the filtering stage in the algorithm for tomographic reconstruction of convolution and backprojection (Filtered BackProjection—FBP). We substantiate the neural network architecture, selected on the basis of the possibility of approximating the ramp filtering operation with sufficient accuracy. The network performance has been demonstrated using synthetic data that mimics low-exposure tomographic projections. The quantum nature of X-ray radiation, the exposure time of one frame, and the nonlinear response of the ionizing radiation detector are taken into account when generating the synthetic data. The reconstruction time using the proposed network is 11 times shorter than that of the heavy networks selected for comparison, with the reconstruction quality in the $SSIM$ metric above 0.9.

Keywords: low-dose computed tomography, neural networks, UNet, fast computing.

Presented by the member of Editorial Board: A. A. Lazarev

Received: 24.01.2021
Revised: 01.06.2021
Accepted: 30.06.2021

DOI: 10.31857/S0005231021100123


 English version:
Automation and Remote Control, 2021, 82:10, 1752–1762

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© Steklov Math. Inst. of RAS, 2024