The paper is devoted to the choice of an algorithm for automatic controlled classification of multi-zone satellite images of Landsat 8 OLI for the purposes of agricultural crop research based on the analysis of various mathematical classification algorithms and comparison of the practical results of these algorithms when using the ENVI 5.4 software package. In the period from June to August 2020, a field survey was conducted by coordinating and ground-based object recognition for the purpose of compiling decryption standards based on images. The paper analyzes four frequently used popular algorithms for automatic controlled classification – maximum likelihood, minimum distance, Mahalanobis distance, parallelepiped. As a result, it is concluded that when classifying objects with very close brightness values, the maximum likelihood algorithm gives optimal and objective results. This conclusion was confirmed by the cameral method by evaluating the reliability of the classification results. The result of the study can be used for mapping agricultural crops and solving other problems of agricultural activity in Vietnam. The methodology presented in the paper can be applied when choosing controlled classification algorithms for other groups of plant complexes and objects based on remote sensing data from space.
The article considers the composition, purpose and content of cadastral engineering and economic maps (CEEM), describes the information to be displayed on CEEM that can be obtained from state cadastres and registers. It also describes the characteristics of the technology for the creation of cadas-tral engineering and economic cardboards CEEM though the consideration of the three main CEEM creation stages: design, drawing and preparing the map for publication. All stages involve the use of a single electronic cartographic basis, remote sensing data from space, geoinformation systems. The use of the technology described in the article will allow performing inventory and cadastral engineering and economic mapping. The resulting cartographic works – cadastral engineering and economic maps - contribute to improving the efficiency of land and other resources management, solving problems of municipal territories’ development that arise when making planning decisions, analyzing and evaluating available resources.
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