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JOURNALS // Vestnik KRAUNC. Fiziko-Matematicheskie Nauki // Archive

Vestnik KRAUNC. Fiz.-Mat. Nauki, 2020 Volume 31, Number 2, Pages 117–128 (Mi vkam406)

This article is cited in 1 paper

INFORMATION AND COMPUTATION TECHNOLOGIES

Convolutional networks for segmentation of large vein images

A. A. Egorova, S. A. Lysenkovab, K. V. Mazayshvilib

a Federal State Institution "Scientific Research Institute for System Analysis of the Russian Academy of Sciences", Surgut branch
b Budget institution of higher education of the Khanty-Mansiysk Autonomous Okrug–Ugra Surgut State University

Abstract: The article presents the results of work on image segmentation individual images of magnetic resonance imaging of the retroperitoneal space. The issues of detection and segmentation of objects the main veins of retroperitoneal space based on the convolutional architecture of a neural network for semantic pixel segmentation are considered. An automatic, accurate and reliable method using the convolutional neural network U-Net for extracting vein vessels from MRI images is proposed. Deep network training with a large receptive field U-Net allows you to achieve significant results even with the presence of low-quality source data, on small training samples. The data expansion strategy seems to be an effective way to reduce the degree of retraining in the recognition of medical images — veins

Keywords: convolutional architecture, neural networks, image segmentation, medical data.

UDC: 519.88

DOI: 10.26117/2079-6641-2020-31-2-117-128



© Steklov Math. Inst. of RAS, 2024