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.
References:
- Kulchin, Yu.N. Distributed Optical Fiber Measuring Systems. – Moscow: Fizmatlit, 2001. – 272 p. – (in Russian).
- Terechenko, S.A. Methods of a computing tomography. – Moscow, Fizmatlit, 2004. – 320 p. – (in Russian).
- Natterer F. Mathematics of Computerized Tomography / John Wiley & Sons Ltd., N.-Y., 1986.
- Bahvalov N.S. Numerical methods. – Moscow: Nauka, 1973. – 632 p. – (in Russian).
- Herman, G.T. Three methods for reconstructing objects from X rays: A comparative study / G.T. Herman, S.W. Rowland // Computer Graphics and Image Processing. – 1973. – V. 2. – P. 151-178.
- Gordon, R.A Tutorial on ART. (Algebraic reconstruction techniques). // IEEE Tr. on Nuclear Sciences. – 1974. – V. NS-21, No. 1. – P. 78-93.
- Herman, G.T. Iterative reconstruction algorithms / G.T. Herman, A. Lent // Computers in Biology and Medicine. – 1976. – Vol. 6. – P. 273-294.
- Adler, A. A neural network image reconstruction technique for electrical impedance tomography / A. Adler, R. Guardo // IEEE Trans. Med. Imag. – .1994. – .Vol. 3. – P. 594-600.
- Kulchin, Yu.N. Neural-like and algebraic modeling of projection data in parallel fiber optical tomography in limited-angle conditions / Yu.N. Kulchin, Е.V. Zakasovskaya // Computer Optics. – 2009. – V. 33, N 3. – P. 318-324. – ISSN 0134-2452. – (in Russian).
- Kulchin, Yu.N. Perceptron application in nonlinear reconstruction tomography / Yu.N. Kulchin, I.V. Denisov, A.V. Panov, N.A. Rybalchenko // Control sciences. – 2006. – N 4. – P. 59-63. – (in Russian).
- Kulchin, Yu.N. Tomography methods for vector fields study by using space-distributed fiber optic sensors with integral sensitivity. / Yu.N. Kulchin, O.B. Vitrik, R.V. Romashko, Yu.S. Petrov, O.V. Kirichenko, O.T. Kamenev // Fiber and integrated optics. – 1998. – Vol. 17, No. 1. – P. 75-84.
- Denisov, I.V. Fiber-optical temperature measuring system / I.V. Denisov, V.A. Sedov // Book of abstracts 6th International Conference on "Mid-Infrared Optoelectronics Materials and Devices". – SPb, 2004. – P. 155–156.
- Snaider, A. The theory of optical fiber / А. Snaider, G.H. Lav – Moscow, Radio i sviaz, 1987. – 656 p. – (in Russian).
- Denisov I.V. Fiber-optical temperature sensor with microbends / I.V. Denisov, V.A. Sedov, N.A. Rybalchenko // Instruments and experimental techniques – 2005. – N 5. – P. 131–134. – (in Russian).
- Tihonov, A.N. Method of solution ill-posed problem / A.N. Tihonov, V.Ia. Arsenin – Moscow: Nauka, 1986. – 288 p. – (in Russian).
- Kulchin, Yu.N. Reconstruction of Distributed Physical Fields in Integrating Measuring Systems and Systems of Direct Measuring in Rare Points of Field / Yu.N. Kulchin, B.S. Notkin, A.Yu. Kim // Optical Memory and Neural Networks (Information Optics). – 2008. – Vol. 17, No. 2. P. 93-100.
© 2009, ИСОИ РАН
Россия, 443001, Самара, ул. Молодогвардейская, 151; электронная почта: ko@smr.ru ; тел: +7 (846 2) 332-56-22, факс: +7 (846 2) 332-56-20