International audienceForecasting the crop phenology helps in crop production estimation, irrigation scheduling and in crop classification. In this article, we propose a methodology that uses the Normalized Difference Vegetation Index (NDVI), derived from the bands of an optical multispectral satellite (Sentinel-2) data for forecasting crop phenology stages using a Long Short-Term Memory (LSTM) network. Firstly, LSTM is used for forecasting the NDVI values until the end of season and then the stage estimation technique is applied on this forecast data to get the phenology points. This method is experimented on a region in India, where the potato crop was grown. The performance of the LSTM model on test dataset are: MAE≈ 0.19, MSE≈ 0.06 and ...
Precise phenological calendars, for each species and cultivar, are necessary both to highlight anoma...
With the availability of high frequent satellite data, crop phenology could be accurately mapped usi...
Remote sensing technologies and deep learning/machine learning approaches play valuable roles in cro...
International audienceForecasting the crop phenology helps in crop production estimation, irrigation...
The Normalized Difference Vegetation Index (NDVI) is a well-known indicator of the greenness of the ...
Understanding crop phenology is crucial for predicting crop yields and identifying potential risks t...
Agricultural intensification is defined in terms as cropping intensity, which is the numbers of crop...
Phenological changes of cropland are the pivotal basis for farm management, agricultural production,...
Part 1: GIS, GPS, RS and Precision FarmingInternational audienceRemote sensing based phenology detec...
International audienceRemotely-sensed vegetation phenology is used here to identify key stages of an...
Vegetation index time-series analysis of multitemporal satellite data is widely used to study vegeta...
Knowing the current phenological state of an agricultural crop is a powerful tool for precision farm...
Precise phenological calendars, for each cultivated species and variety, are necessary both to highl...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Precise phenological calendars, for each species and cultivar, are necessary both to highlight anoma...
With the availability of high frequent satellite data, crop phenology could be accurately mapped usi...
Remote sensing technologies and deep learning/machine learning approaches play valuable roles in cro...
International audienceForecasting the crop phenology helps in crop production estimation, irrigation...
The Normalized Difference Vegetation Index (NDVI) is a well-known indicator of the greenness of the ...
Understanding crop phenology is crucial for predicting crop yields and identifying potential risks t...
Agricultural intensification is defined in terms as cropping intensity, which is the numbers of crop...
Phenological changes of cropland are the pivotal basis for farm management, agricultural production,...
Part 1: GIS, GPS, RS and Precision FarmingInternational audienceRemote sensing based phenology detec...
International audienceRemotely-sensed vegetation phenology is used here to identify key stages of an...
Vegetation index time-series analysis of multitemporal satellite data is widely used to study vegeta...
Knowing the current phenological state of an agricultural crop is a powerful tool for precision farm...
Precise phenological calendars, for each cultivated species and variety, are necessary both to highl...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Precise phenological calendars, for each species and cultivar, are necessary both to highlight anoma...
With the availability of high frequent satellite data, crop phenology could be accurately mapped usi...
Remote sensing technologies and deep learning/machine learning approaches play valuable roles in cro...