Multi-Temporal analysis of remotely sensed information using wavelets

Land cover changes (LCC) are an important component of Global Change. LCC can be described not only by its occur-rence, but also by the land cover replacement, causal agent and change duration or recuperation. Nowadays, remote sensing offers the opportunity to assemble reliable time series, however...

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Detalles Bibliográficos
Autores principales: Campos, Alfredo Nicolas, Di Bella, Carlos Marcelo
Formato: info:ar-repo/semantics/artículo
Lenguaje:Inglés
Publicado: Scientific Research Publishing 2019
Materias:
Acceso en línea:http://hdl.handle.net/20.500.12123/4478
https://file.scirp.org/Html/11-8401156_22158.htm
Descripción
Sumario:Land cover changes (LCC) are an important component of Global Change. LCC can be described not only by its occur-rence, but also by the land cover replacement, causal agent and change duration or recuperation. Nowadays, remote sensing offers the opportunity to assemble reliable time series, however this fails to make a characterization of LCC since the series represents dynamics due to the combination of several processes occurring simultaneously. In this arti-cle we proposed an approach to the study of LCC using wavelet transform (WT) and MODIS vegetation time series. Through this work we have demonstrated the capacity of this tool in order to recognize and characterize four different LLC documented in scientific publications, presenting the results divided in frequency scales as interannual, seasonal and rapid changes. The information decomposed in frequency allows the interpretation of each involved process with-out the interference of others. The uses of WT in an image time series give us the possibility of joining temporal and spatial dimension in a single raster. Layers generated with WT might be used to pattern recognition in LCC and to im-prove an image classification.