Increasing the Informativity of Multispectral Satellite Images Using Texture Analysis Data

Journal Title: Lesnoy Zhurnal (Russian Forestry Journal) - Year 2022, Vol 20, Issue 2

Abstract

The article considers the problem of incresing the informativity of multispectral images of medium (10–30 m) and high (1–4 m) spatial resolution obtained from foreign and national satellite remote sensing systems by involving additional textural information from panchromatic satellite images of very high spatial resolution (≲(1–0.4) m). The images of test sites on the territory of Savvat’yevo forestry (Tver region) from Landsat 8, Sentinel 2 and WorldView 2 satellites equipped with multispectral instruments were an object of this research. Geo-referenced ground survey data were used to validate the calculation results. We used the values of the spectral reflectance in the visible and near-infrared channels normalized to the appropriate integral characteristic as spectral features. Statistical characteristics were calculated in order to extract texture features based on the distribution of the co-occurrence of gray levels (Haralick texture features) within a moving window running the image with a given spatial step. A correlation analysis of textural features was carried out considering changes in distance and angle of adjacency. It was shown that for the selected leading features (autocorrelation, asymmetry, contrast and correlation) the first three can be used with an arbitrary direction of adjacency, while the latter needs to be considered in two different directions. Also we have found that all the considered classification algorithms provide a significant increase of accuracy when both spectral and textural features are used, in comparison with the traditional spectral classification. This result was shown for all images of test sites obtained by different satellites. It is possible to make a preliminary conclusion that the proposed integrated approach of thematic processing can improve the quality of object recognition in the case of using images of both medium and high spatial resolution. Estimates obtained during the thematic mapping of dominant and subdominant forest species showed close classification accuracies for different initial multispectral images (with a scatter of no more than 5 % around the average value of 85 %). Mostly this is due to the presence of specific errors in the ground-based forest inventory data and indicates the necessity of their updating with the use of satellite remote sensing images. For citation: Zotov S.A., Dmitriev E.V., Melnik P.G., Kondranin T.V. Increasing the Informativity of Multispectral Satellite Images Using Texture Analysis Data. Lesnoy Zhurnal [Russian Forestry Journal], 2022, no. 2, pp. 84–104. DOI: 10.17238/issn0536-1036-2022-2-84-104 Funding: The work was carried out with the financial support of the Russian Foundation for Basic Research; project No. 20-07-00370 “Fundamental Problems of Improving the Informativity of Data Processing of Optoelectronic Aerospace Devices with High Spatial and Spectral Resolution”.

Authors and Affiliations

S. A. Zotov, E. V. Dmitriev, P. G. Melnik, T. V. Kondranin

Keywords

Related Articles

Improving the Stability of Wood-Cutting Saws by Thermoplastic Action on the Distribution of Residual Stresses in the Blade

The saw stability in operation defines the ability of the saw blade to resist the forces acting on it in the plane of greatest rigidity. The saw can work reliably only in case of maintaining stable balance, which is achi...

Resonance Acoustic and Colorimetric Characteristics of Wood in Old Structures

The reserves of resonance wood in the forests of the planet are limited, and in many countries they are completely absent, since it is formed only under certain habitat conditions in some trees with genetically determine...

Mathematical Modeling of the Bark Drying Process

Currently, a large amount of wood bark waste is generated at the timber processing enterprises of the Russian Federation, which is not widely used in industry and has a negative impact on the environment. One of the feas...

Forest Typologies in the Russian Federation

The aim of the work is to conduct a comparative analysis of the main Russian forest type classifications: forest-ecological classification by E.V. Alekseev – P.S. Pogrebnyak, phytocoenotic classification by V.N. Sukach...

Ecological and Agrochemical Assessment of the Kamennaya Steppe Soils under Forest Cenosi

A set of parameters of soils under forest belts was studied. The objects of research were old-growth (65–68 yrs) ravine and shelterbelt forest plantations of the Kamennaya Steppe. The results allow assessing the trends o...

Download PDF file
  • EP ID EP702113
  • DOI https://doi.org/10.37482/0536-1036-2022-2-84-104
  • Views 111
  • Downloads 0

How To Cite

S. A. Zotov, E. V. Dmitriev, P. G. Melnik, T. V. Kondranin (2022). Increasing the Informativity of Multispectral Satellite Images Using Texture Analysis Data. Lesnoy Zhurnal (Russian Forestry Journal), 20(2), -. https://www.europub.co.uk/articles/-A-702113