2019
DOI: 10.1117/1.jrs.13.014510
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Spatial and spectral pattern identification for the automatic selection of high-quality MODIS images

Abstract: Remote sensing is providing an increasing number of crucial data about Earth. Systematic revisitation time allows the analysis of long time series as well as imagery utilization in the most interesting moments. Nevertheless, the current huge amount of data makes essential the usage of automatic methods to select the best captures, as many of them are not useful because of clouds, shadows, etc. Because of that, one of the characteristics of the more recent missions is the distribution, along with the spectral d… Show more

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Cited by 2 publications
(2 citation statements)
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“…The variogram plots the dependence of the spatial variance so that the spatial pattern can be analyzed. It has been applied using r sample point measurements 29 as well as remote sensing images 30 . First, the empirical variogram is computed based on the variance of all pairs of pixels at different intervals (lags) of distances.…”
Section: Variogram Analysismentioning
confidence: 99%
“…The variogram plots the dependence of the spatial variance so that the spatial pattern can be analyzed. It has been applied using r sample point measurements 29 as well as remote sensing images 30 . First, the empirical variogram is computed based on the variance of all pairs of pixels at different intervals (lags) of distances.…”
Section: Variogram Analysismentioning
confidence: 99%
“…The methodology is based on selecting a subset of high-quality images and defining a threshold of low deviation values (Pesquer, Domingo, & Pons, 2013). The selection of the highest-quality MODIS images combines the quality assessment of USGS (Roy et al, 2002) with a geostatistical spatial pattern analysis (Pesquer, Domingo, & Pons, 2019). Throughout the workflow execution and depending on the results obtained, a block of steps might need to be re-executed more than once.…”
Section: Data and Workflow Descriptionmentioning
confidence: 99%