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Please use this identifier to cite or link to this item: https://libeldoc.bsuir.by/handle/123456789/63015
Title: Methodology for Assessing the Quality of Multispectral Space Imaging Data in Landscape Element Monitoring
Authors: Zelentsov, V.
Mochalov, V.
Lapitskaya, N.
Keywords: публикации ученых;machine learning algorithms;Multispectral Space Imaging Data;Landscape Element Monitoring
Issue Date: 2025
Publisher: Springer Cham
Citation: Methodology for Assessing the Quality of Multispectral Space Imaging Data in Landscape Element Monitoring / V. Zelentsov, V. Mochalov, N. Lapitskaya // Robotics in Agriculture : Proceedings of the Fifth International Conference on Agriculture Digitalization and Organic Production. – 2025. – Vol. 1. – Р. 355–366.
Abstract: To determine the types and current condition of agricultural fields, methods of automated processing of multispectral space imagery are increasingly being used. One of the most relevant tasks is the semantic segmentation of land scape elements within the studied scene based on machine learning algorithms. Various algorithms are known for addressing this task, but the problem of evalu ating the quality of processing results requires a better approach for solving. This paper discusses the indicators that characterize the quality of results of imagery data thematic processing when monitoring the condition of agricultural fields, using fields designated for forage preparation as an example. The methodology for assessing the quality of processed multispectral space imagery data is presented. A list and numerical values of basic quality indicators for identifying the condition of agricul tural fields, considering ground survey data and hyperparameter values in machine learning algorithms, are provided. Generalized quality indicators for processing results are proposed. The role of a well-founded choice of initial data for evaluating the quality of processed imagery results is highlighted. The mathematical apparatus of fuzzy clustering is applied when forming the initial data, and the degree of member ship of landscape elements to a selected cluster is taken into account when refining the initial data. The presented methodology can also be applied to determining the types and forecasting the yield of agricultural crops, detecting diseases, and solving other agricultural production issues/
URI: https://libeldoc.bsuir.by/handle/123456789/63015
DOI: https://doi.org/10.1007/978-3-032-07171-2_29
Appears in Collections:Публикации в зарубежных изданиях

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