Skip to main content
AkademIndex

Products

For developers

AkademBasesoonOpen API for the ecosystem
Latin
English
Article

Recognition algorithms based on the construction of threshold rules using two-dimensional representative pseudo-objects

Shavkat FazilovResearch Institute for the Development of Digital Technologies and Artificial Intelligence, 17A, Boz-2, Tashkent, 100125, UzbekistanNomaz MirzaevResearch Institute for the Development of Digital Technologies and Artificial Intelligence, 17A, Boz-2, Tashkent, 100125, UzbekistanSobirjon RadjabovInstitute of Fundamental and Applied Research, TIIAME National Research University, 39, Qori Niyaziy str., Tashkent, 100000, UzbekistanOlimjon MirzaevResearch Institute for the Development of Digital Technologies and Artificial Intelligence, 17A, Boz-2, Tashkent, 100125, UzbekistanFarkhod MelievResearch Institute for the Development of Digital Technologies and Artificial Intelligence, 17A, Boz-2, Tashkent, 100125, Uzbekistan
E3S Web of Conferencesjournal2023en
ABI

Abstract

The development of recognition algorithms is discussed in the article; they are built using threshold rules based on representative pseudo-objects that provide a solution to the recognition problem in conditions of high dimensionality of feature space. A new approach is proposed, based on the formation of a set of two-dimensional base pseudo-objects and the determination of a relevant set of two-dimensional threshold proximity functions when constructing an extreme recognition algorithm. A parametric description of the proposed recognition algorithms is given, presented in the form of a sequence of computational procedures, the main of which are procedures for determining: 1) groups of tightly coupled features; 2) a set of representative features (RF); 3) groups of tightly coupled pseudo-objects in the RF subspace; 4) difference functions between objects in the two-dimensional subspace of RF; 5) groups of tightly coupled pseudo-objects in the RF subspace; 6) a set of basic pseudo-objects; 7) difference functions between the basic and simple pseudo-object in the two-dimensional RF subspace; 8) functions that differentiate between a pseudo-object and a class; 9) discriminant functions in the two-dimensional subspace of RF; 10) groups of tightly coupled separating functions; 11) basic separating functions in each group and 12) integral recognition operator for basic discriminant proximity functions. The results of a comparative analysis of the proposed and known recognition algorithms are presented. The main conclusion is that the implementation of the approach proposed in this study allows us to move from a given feature space to a space of RFs of lesser dimension.

Topics

Identifiers

Citations and references

Metrics — AkademScholar · Coming soon