Data mining and image recognition
A.E. Marchenko, E.I. Ershov, D.A. Shepelev, D.S. Sidorchuk, V.P. Bozhkova, D.P. Nikolaev Designing of language of description of observable properties of recognized objects in the absence of samples
Intellectual systems and technologies
Image and signal processing
MACHINE LEARNING
A.E. Marchenko, E.I. Ershov, D.A. Shepelev, D.S. Sidorchuk, V.P. Bozhkova, D.P. Nikolaev Designing of language of description of observable properties of recognized objects in the absence of samples

Abstract.

Within the problem of object recognition with computer vision technologies, the problem of designing of language of description of properties of recognized objects in the absence of samples is concerned. The principles of such a language are proposed, the particular properties, which the language should be able to describe, are chosen. The methods of specification of these properties in the language concerned are proposed. The syntax of the language is discussed. An example of description of an object in the designed language is given.

Keywords:

computer vision, object recognition, description language, observable properties, geometrical shape, color.

PP. 51-64.

DOI: 10.14357/20790279180506

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