The applicability of informative textural features for the detection of factors negatively influencing the growth of wheat on aerial images

Authors

DOI:

https://doi.org/10.15587/1729-4061.2022.263433

Keywords:

textural features, agricultural crops, image processing, space images

Abstract

Automated processing of aerospace information makes it possible to effectively solve scientific and applied problems in cartography, ecology, oceanology, exploration and development of minerals, agriculture and forestry, and many other areas. At the same time, the main way to extract information is to decipher images, which are the main carrier of information about the area.

Aerospace images are a combination of natural texture regions and man-made objects. This article discusses methods for analyzing texture images. The main tasks of the analysis of texture areas include the selection and formation of features that describe texture differences, the selection and segmentation of texture areas, the classification of texture areas, and the identification of an object by texture. Depending on the features of the texture areas of the images used, segmentation methods based on area analysis can be divided into statistical, structural, fractal, spectral, and combined methods.

The article discusses textural features for the analysis of texture images, and defines informative textural features to identify negative factors for crop growth. To solve the tasks, textural features are used. Much attention is paid to the development of software tools that allow to highlight the features that describe the differences in textures for the segmentation of texture areas. This approach is universal and has great potential on the studied aerospace image to identify objects and boundaries of regions with different properties using clustering based on images of the same surface area taken in different vegetation periods. That is, the question of the applicability of sets of texture features and other parameters for the analysis of experimental data is being investigated.

Supporting Agency

  • For providing data on agricultural crops of Northern Kazakhstan in the preparation of this article, the author expresses gratitude to the Scientific and Production Center of Grain Farming named after A. I. Barayev.

Author Biographies

Moldir Yessenova, L. N. Gumilyov Eurasian National University

Doctoral Student

Department of Information Systems

Gulzira Abdikerimova, L. N. Gumilyov Eurasian National University

PhD

Department of Information Systems

Nurgul Baitemirova, Kh. Dosmukhamedov Atyrau University

Senior Lecturer, Master of Pedagogical Sciences

Department of Software Engineering

Galia Mukhamedrakhimova, L. N. Gumilyov Eurasian National University

Candidate of Pedagogical Sciences, Acting Professor

Department of Radio Engineering, Electronics and Telecommunications

Karipola Mukhamedrakhimov, S. Seifullin Kazakh Agro Technical University

Candidate of Physical and Mathematical Sciences, Senior Lecturer

Department of Radio Engineering, Electronics and Telecommunications

Zeinigul Sattybaeva, Sh. Ualikhanov Kokshetau State University

Аssociate Professor

Department of Agriculture of Bioresources

Indira Salgozha, Abai Kazakh National Pedagogical University

PhD, Senior Teacher

Department of Informatics and Informatization of Education

Akbota Yerzhanova, S. Seifullin Kazakh Agro Technical University

Teacher

Department Technological Machines and Equipment

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Published

2022-08-31

How to Cite

Yessenova, M., Abdikerimova, G., Baitemirova, N., Mukhamedrakhimova, G., Mukhamedrakhimov, K., Sattybaeva, Z., Salgozha, I., & Yerzhanova, A. (2022). The applicability of informative textural features for the detection of factors negatively influencing the growth of wheat on aerial images. Eastern-European Journal of Enterprise Technologies, 4(2(118), 51–58. https://doi.org/10.15587/1729-4061.2022.263433