Artificial intelligence

Scientific journal

ISSN 2710-1673

ONLINE: ISSN 2710-1681

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Classification method of laser beam spots using a parallel-hierarchical networks on FPGA

Timchenko L.1, Petrovsky N.1, Kokryatskaya N.1, Marchenko L.1
1 State Economic and Technological University of Transport

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UDC: 004.415
Publication Language: Russian
Stuc. intelekt. 2014; 19(3):163–174

Abstract: In this paper the method of classification of spots of laser beams and its implementation. Discusses the need for filtering noisy images with adaptive methods, such as parallel-hierarchical (IP) network. Presented implementation of such a network on FPGA.

Keywords: PН network, «rough-accurate» estimate, laser beam

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