The applicability of informative textural features for the detection of factors negatively influencing the growth of wheat on aerial images
DOI:
https://doi.org/10.15587/1729-4061.2022.263433Keywords:
textural features, agricultural crops, image processing, space imagesAbstract
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.
References
- Kharalik, R. M. (1979). Statisticheskiy i strukturniy podkhody k opisaniyu tekstur. TIIER, 67 (5), 98–120.
- Kolodnikova, N. V. (2004). Obzor teksturnykh priznakov dlya zadach raspoznavaniya obrazov. Doklady Tomskogo gosudarstvennogo universiteta sistem upravleniya i radioelektroniki, 1 (9), 113–124. Available at: https://cyberleninka.ru/article/n/obzor-teksturnyh-priznakov-dlya-zadach-raspoznavaniya-obrazov
- Gonsales, R., Vuds, R. (2022). TSifrovaya obrabotka izobrazheniy. Litres.
- Arslanov, M. Z., Amirgalieva, Z. E., Kenshimov, C. A. (2016). N-bit Parity Neural Networks with minimum number of threshold neurons. Open Engineering, 6 (1). doi: https://doi.org/10.1515/eng-2016-0037
- Abdikerimova, G. B., Tussupov, J., Murzin, F. A., Khayrulin, S., Bychkov, A. L., Xinyu, W. E. I., Rybchikova, E. I. (2018). Software tools for cell walls segmentation in microphotography. Journal of Theoretical and Applied Information Technology, 96 (15), 4783–4793. Available at: http://www.jatit.org/volumes/Vol96No15/8Vol96No15.pdf
- Yerzhanova, A., Abdikerimova, G., Alimova, Z., Slanbekova, A., Tungatarova, A., Muratkhan, R. et. al. (2022). Segmentation of aerospace images by a non-standard approach using informative textural features. Eastern-European Journal of Enterprise Technologies, 1 (2 (115)), 39–49. doi: https://doi.org/10.15587/1729-4061.2022.253188
- Yessenova, M., Abdikerimova, G., Adilova, A., Yerzhanova, A., Kakabayev, N., Ayazbaev, T. et. al. (2022). Identification of factors that negatively affect the growth of agricultural crops by methods of orthogonal transformations. Eastern-European Journal of Enterprise Technologies, 3 (2 (117)), 39–47. doi: https://doi.org/10.15587/1729-4061.2022.257431
- Gaidel, A. V., Pervushkin, S. S. (2013). Research of the textural features for the bony tissue diseases diagnostics using the roentgenograms. Komp'yuternaya optika, 37 (1), 113–119. Available at: http://computeroptics.ru/KO/PDF/KO37-1/16.pdf
- Chaban, L. N., Berezina, K. V. (2018). Analiz informativnosti spektral'nykh i teksturnykh priznakov pri klassifikatsii rastitel'nosti po giperspektral'nym aerosnimkam. Izvestiya vysshikh uchebnykh zavedeniy. Geodeziya i aerofotosemka, 62 (1), 85–95.
- Kostrov, B. V., Grigorenko, D. V., Ruchkin, V. N., Fulin, V. A. (2016). Theoretical aspects of aerospace image processing in quasi two-dimensional spectral space. MATEC Web of Conferences, 75, 03006. doi: https://doi.org/10.1051/matecconf/20167503006
- Sidorova, V. S. (2012). Hierarchical cluster algorithm for remote sensing data of earth. Pattern Recognition and Image Analysis, 22 (2), 373–379. doi: https://doi.org/10.1134/s1054661812020149
- Sidorova, V. S. (2008). Unsupervised classification of image texture. Pattern Recognition and Image Analysis, 18 (4), 693–699. doi: https://doi.org/10.1134/s1054661808040263
- Plastinin, A. I. (2012). Metod formirovaniya priznakov teksturnykh izobrazheniy na osnove Markovskikh modeley. Samara.
- Borovik, V. S. (2018). Issledovanie intellektual'nykh sistem tekhnicheskogo zreniya dlya raspoznavaniya tekhnogennykh obektov. Tomsk. Available at: https://vital.lib.tsu.ru/vital/access/manager/Repository/vital:8041
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2022 Moldir Yessenova, Gulzira Abdikerimova, Aigulim Bayegizova, Galia Mukhamedrakhimova, Karipola Mukhamedrakhimov, Zeinigul Sattybaeva, Indira Salgozha, Akbota Yerzhanova
This work is licensed under a Creative Commons Attribution 4.0 International License.
The consolidation and conditions for the transfer of copyright (identification of authorship) is carried out in the License Agreement. In particular, the authors reserve the right to the authorship of their manuscript and transfer the first publication of this work to the journal under the terms of the Creative Commons CC BY license. At the same time, they have the right to conclude on their own additional agreements concerning the non-exclusive distribution of the work in the form in which it was published by this journal, but provided that the link to the first publication of the article in this journal is preserved.
A license agreement is a document in which the author warrants that he/she owns all copyright for the work (manuscript, article, etc.).
The authors, signing the License Agreement with TECHNOLOGY CENTER PC, have all rights to the further use of their work, provided that they link to our edition in which the work was published.
According to the terms of the License Agreement, the Publisher TECHNOLOGY CENTER PC does not take away your copyrights and receives permission from the authors to use and dissemination of the publication through the world's scientific resources (own electronic resources, scientometric databases, repositories, libraries, etc.).
In the absence of a signed License Agreement or in the absence of this agreement of identifiers allowing to identify the identity of the author, the editors have no right to work with the manuscript.
It is important to remember that there is another type of agreement between authors and publishers – when copyright is transferred from the authors to the publisher. In this case, the authors lose ownership of their work and may not use it in any way.