Abstract

Introduction. In evaluating the space-time structure of the Earth’s surface, the data of remote sensing of the Earth become more important. Increasing the effectiveness of space survey analysis tools is possible through studying the problem of obtaining an integrated space-time characterization of the state of lands. The purpose of this study is to improve the accuracy of the automated analysis of remote sensing data by taking into account the invariant and dynamic descriptors of the vicinity. Materials and Methods. In order to improve the accuracy of the remote sensing data classification, a computation of complex space-time characteristics of the state of the lands was conducted based on the system analysis of data characterizing the dynamic and invariant states of the territory surrounding the geophysical site. The formalization of this process includes methods for calculating a set of numerical descriptors of the neighborhood: local entropy, local range, standard deviation, color moment, histogram of hues, and color cortege. A technique for calculating a complex descriptor based on the Fisher vector is described. To approbate the solution, a plan for the experiment was drawn up and a sample of the initial data was sampled. Results. The approbation of the methodology and the algorithm developed on its basis, implemented as a set of programs, on the test polygon system showed a variation in the classification accuracy in the range of 81–89% (without regard to the neighborhood), and taking into account the neighborhood, it increases to 91–97%. It is revealed that a significant increase in the radius of the analyzed neighborhood leads to a decrease in the classification accuracy. Conclusions. The application of the developed set of programs allows for the rapid implementation of modeling of spatial systems for the purpose of thematic mapping of land use and analyzing the development of emergency situations. The developed methodology for analyzing lands with regard to the descriptors of the neighborhood makes it possible to improve the accuracy of classification.

Highlights

  • In evaluating the space-time structure of the Earth’s surface, the data of remote sensing of the Earth become more important

  • The purpose of this study is to improve the accuracy of the automated analysis of remote sensing data by taking into account the invariant and dynamic descriptors of the vicinity

  • In order to improve the accuracy of the remote sensing data classification, a computation of complex space-time characteristics of the state of the lands was conducted based on the system analysis of data characterizing the dynamic and invariant states of the territory surrounding the geophysical site

Read more

Summary

ВЕСТНИК МОРДОВСКОГО УНИВЕРСИТЕТА

Целью исследования является повышение точности автоматизированного анализа данных дистанционного зондирования Земли за счет учета инвариантных и динамических дескрипторов окрестности. С целью повышения точности классификации данных дистанционного зондирования Земли проводился расчет комплексных пространственно-временных характеристик состояния земель на основе системного анализа данных, характеризующих динамические и инвариантные состояния территории, окружающей геофизический участок. Апробация методики и созданного на ее основе алгоритма, реализованного в виде комплекса программ, на системе тестовых полигонов показала варьирование точности классификации в диапазоне 81–89 % (без учета дескрипторов окрестности) и 91–97 % (с учетом дескрипторов). Разработанный комплекс программ позволяет оперативно проводить моделирование пространственных систем с целью тематического картографирования землепользования и анализа развития чрезвычайных ситуаций, а созданная методика анализа земель с учетом дескрипторов окрестности дает возможность повысить точность классификации. А. Повышение эффективности процесса интерпретации данных дистанционного зондирования земли за счет анализа дескрипторов окрестности // Вестник Мордовского университета.

Introduction
СПИСОК ИСПОЛЬЗОВАННЫХ ИСТОЧНИКОВ
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