The monitoring of cropland areas and in particular the capability to evaluate the performance of a field over space and time is becoming a crucial activity to schedule agronomic operations (e.g., fertilization) properly. In particular, the use of remotely sensed data opened new ways for this kind of analysis. In this work, we present a methodology based on Functional Data Analysis that starting from remotely sensed time-series data gen-erates cluster maps of a cropland area. Starting from vegetation index time-series data, Functional Principal Component Analysis (FPCA) was applied to derive FPCA scores and components. FPCA scores are then clusterized to obtain maps that embed the dynamics of crops over space and time. The derived maps can b...
Remote Sensing in agriculture is a tool used for monitoring and investigating crops. Remote Sensing ...
A new methodology is proposed for the analysis, modeling, and forecasting of data collected from a w...
Satellite remote sensing can provide indicative measures of environmental variables that are crucial...
International audienceSentinel-2 satellite imagery offers a wealth of spectral information combined ...
Understanding and interpreting the temporal variations of the vegetation growth can provide valuable...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
This is the published version of the paper: Pascucci, S., Carfora, M.F., Palombo, A., Pignatti, S.,...
In this paper, a novel approach for exploiting multitemporal remote sensing data focused on real-tim...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Farming activities are rapidly evolving thanks to technological improvements, even though global sta...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Accurate classification and mapping of crops is essential for supporting sustainable land management...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
Methods for crop phenology detection using time series analysis have provided accurate information f...
Remote Sensing in agriculture is a tool used for monitoring and investigating crops. Remote Sensing ...
A new methodology is proposed for the analysis, modeling, and forecasting of data collected from a w...
Satellite remote sensing can provide indicative measures of environmental variables that are crucial...
International audienceSentinel-2 satellite imagery offers a wealth of spectral information combined ...
Understanding and interpreting the temporal variations of the vegetation growth can provide valuable...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
This is the published version of the paper: Pascucci, S., Carfora, M.F., Palombo, A., Pignatti, S.,...
In this paper, a novel approach for exploiting multitemporal remote sensing data focused on real-tim...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Farming activities are rapidly evolving thanks to technological improvements, even though global sta...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Accurate classification and mapping of crops is essential for supporting sustainable land management...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
Methods for crop phenology detection using time series analysis have provided accurate information f...
Remote Sensing in agriculture is a tool used for monitoring and investigating crops. Remote Sensing ...
A new methodology is proposed for the analysis, modeling, and forecasting of data collected from a w...
Satellite remote sensing can provide indicative measures of environmental variables that are crucial...