info:eu-repo/semantics/conferenceObject
Classification of land cover in optical satellite images, using characteristics and color indices
Fecha
2023-04-04Registro en:
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AIP Conference Proceedings
Autor
Auccahuasi, Wilver
Herrera, Lucas
Rojas, Karin
Urbano, Kitty
Romero, Luis
Lovera, Denny
Cueva, Juanita
Perez, Ivan
Santos, César
Leva, Antenor
Fuentes, Alfonso
Sernaque, Fernando
Institución
Resumen
Satellite images are being used more and more frequently in the analysis of land coverage, due to their ability to record large areas of land, managing to analyze their type of coverage and the uses that it is providing, in this work the images of areas corresponding to the Amazon, where an attempt is made to evaluate through the use of Neural Networks, if the chosen area is being covered by vegetation or does not present vegetation, this analysis is carried out thanks to the calculation of the reflectance and the NDVI vegetation index. For the purposes of being able to analyze the analysis methodology, a tool developed in Matlab is provided, where all the processes can be carried out both for the management of the images, as well as to carry out the procedures for the use of neural networks, as well as the visualization of the characteristics and the final result of the classification. The proposed methodology is scalable and can be adapted to multiple needs and uses, managing to increase the number of characteristics to evaluate, such as being able to use different types of groups of images. An image database model is also presented that corresponds to areas with vegetation cover and areas that do not correspond to vegetation cover. With the use of the developed application, it is possible to test the proposed methodology.