Abstract

The article presents an analysis of a non-standard approach to the segmentation of textural areas in aerospace images. The question of the applicability of sets of textural features for the analysis of experimental data is being investigated to identify characteristic areas on aerospace images that in the future it will be possible to identify types of crops, weeds, diseases, and pests. The selection of suitable algorithms was carried out and appropriate software tools were created on Matlab 2021a and in the software package for statistical analysis Statistica 12. The main way to extract information is to decrypt images, which are the main carrier of information about the underlying surface. The main tasks of texture area analysis include selection and formation of features describing textural differences; selection and segmentation of textural areas; classification of textural areas; identification of an object by texture. To solve the tasks, spectral brightness coefficient (SBC), Normalized Difference Vegetation Index (NDVI), textural features of various crops and weeds. Much attention will be paid to the development of software tools that allow the selection of features describing textural differences for the segmentation of textural areas into subdomains. That is the question of the applicability of sets of textural features and other parameters for the analysis of experimental data to identify types of soils and soils, vegetation types, humidity, crop damage in aerospace images will be resolved. This approach is universal and has great potential for identifying objects using image clustering. To identify the boundaries of areas with different properties of the image under study, images of the same surface area taken at different times are considered.

Highlights

  • IntroductionOperations for recognizing real objects in images are usually used to create conditions that increase the efficiency and quality of distinguishing and recognizing objects that are searched for or studied by processing images

  • The relevance of the topic is determined by the study of textural features during a certain growing season, the extraction of Eastern-European Journal of Enterprise Technologies ISSN 1729-3774

  • The aim of the study is to determine the types of crops, weeds, diseases, and pests from aerospace images

Read more

Summary

Introduction

Operations for recognizing real objects in images are usually used to create conditions that increase the efficiency and quality of distinguishing and recognizing objects that are searched for or studied by processing images. The problem of building algorithms that divide images from different sources into clusters (for solving classification problems) often arises in such applied areas as, for example, the analysis of photos of the Earth’s surface, the detection of defects, scratches on images, the study of images of starry sky regions. The method of image processing varies depending on the research reports, for example, the most informative is to separate fragments and increase them, increase the intensity contrast, improve the image quality, and so on. When solving such problems, image clustering algorithms based on certain criteria must have such properties as high classification accuracy and high speed. The relevance of the topic is determined by the study of textural features during a certain growing season, the extraction of Eastern-European Journal of Enterprise Technologies ISSN 1729-3774

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call