Application of artificial neural networks for the analysis of multispectral images
- 1 August 2021
- journal article
- research article
- Published by Optica Publishing Group in Journal of Optical Technology
- Vol. 88 (8), 441-444
- https://doi.org/10.1364/jot.88.000441
Abstract
A model of a multispectral camera that can capture images at five wavelengths—532, 612, 780, 850, and 940 nm—is designed and fabricated. The obtained multispectral images are analyzed. Algorithms of artificial neural network operation in the processing of multispectral images are discussed. A convolutional neural network for identification and classification of multispectral images in real-time is developed.Keywords
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