FIELD: physics.
SUBSTANCE: method uses an artificial neural network consisting of artificial neurons with nonlinear activation functions, as well as an algorithm for converting the input image to the R, G, B and Gray matrices for input to the neural network input.
EFFECT: improving the quality of determining the similarity or difference of images to the degree of mixing and the entry of image elements into the composition of comparative samples.
3 dwg
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Authors
Dates
2017-07-14—Published
2016-07-15—Filed