Аlexander Trunov


The vector rotor of second order, which provide processing of image was introduced and considered. The feature of vector rotor of second order as vector product and step vector were investigated. It was received the algebraical expressions for determination of step vector as under direct action of rotor. The obtained results of modelling and investigation of values coefficients of compression and losses for different type of image, gradations and vector rotor fist and second order. It is shown the examples of applications of vector rotor to preprocessing of images in sensors for hyperspectral analysis

Ключові слова

automation; preprocessing; vector rotor second order; controlling rules; operation under rotor vector; expression of step vector; coefficient of compression and losses; hyperspectral sensor

Повний текст:



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