Neuro-iterative algorithm of tomographic reconstruction of the distributed physical fields in the fibre-optic measuring systems
Y.N. Kulchin, B.S. Notkin, S.V. Aleksandrovich

Institute of Automation and Control Processes, FEB RAS,
Maritime State University after G.I. Nevelskoy

Full text of article: Russian language.

Abstract:
The research of the algebraic and neuro-network reconstruction methods of the distributed physical fields for the fibre-optic measuring network of a tomographic type was carried out. Advantages and the disadvantages of a neural network approach were revealed. The neuro-iterative algorithm which combines benefits neural network with algebraic methods of the reconstructive tomography was suggested.

Key words: fibre-optic tomography, computer tomography, distributed physical fields, artificial neural networks.

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