MODIStsp

Data Preprocessor

Automates processing of MODIS Land Products time series data from satellite imagery

An "R" package for automatic download and preprocessing of MODIS Land Products Time Series

GitHub

156 stars
15 watching
51 forks
Language: R
last commit: 5 months ago
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gdalmodismodis-datamodis-land-productspeer-reviewedpreprocessingrr-packageremote-sensingrstatssatellite-imagerytime-series

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