In this letter, a new approach for crop phenology estimation with remote sensing is presented. The proposed methodology is aimed to exploit tools from a dynamical system context. From a temporal sequence of images, a geometrical model is derived, which allows us to translate this temporal domain into the estimation problem. The evolution model in state space is obtained through dimensional reduction by a principal component analysis, defining the state variables, of the observations. Then, estimation is achieved by combining the generated model with actual samples in an optimal way using a Kalman filter. As a proof of concept, an example with results obtained with this approach over rice fields by exploiting stacks of TerraSAR-X dual polari...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Near-surface cameras, such as those in the PhenoCam network, are a common source of ground truth dat...
Satellite Image Time Series (SITS), such as the ones acquired by the new Sentinel-2 (S2), combine a ...
In this letter, a new approach for crop phenology estimation with remote sensing is presented. The p...
In this paper, a novel approach for exploiting multitemporal remote sensing data focused on real-tim...
Information of crop phenology is essential for evaluating crop productivity. In a previous work, we ...
In this study, a methodology based in a dynamical framework is proposed to incorporate additional so...
Knowing the current phenological state of an agricultural crop is a powerful tool for precision farm...
In the last decade, suboptimal Bayesian filtering (BF) techniques, such as Extended Kalman Filtering...
Vegetation monitoring and mapping based on multi-temporal imagery has recently received much attenti...
A new methodology to estimate the growth stages of agricultural crops using the time series of polar...
Precise phenological calendars, for each cultivated species and variety, are necessary both to highl...
This paper describes the selection of a state-space estimation method for application to the emergin...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Near-surface cameras, such as those in the PhenoCam network, are a common source of ground truth dat...
Satellite Image Time Series (SITS), such as the ones acquired by the new Sentinel-2 (S2), combine a ...
In this letter, a new approach for crop phenology estimation with remote sensing is presented. The p...
In this paper, a novel approach for exploiting multitemporal remote sensing data focused on real-tim...
Information of crop phenology is essential for evaluating crop productivity. In a previous work, we ...
In this study, a methodology based in a dynamical framework is proposed to incorporate additional so...
Knowing the current phenological state of an agricultural crop is a powerful tool for precision farm...
In the last decade, suboptimal Bayesian filtering (BF) techniques, such as Extended Kalman Filtering...
Vegetation monitoring and mapping based on multi-temporal imagery has recently received much attenti...
A new methodology to estimate the growth stages of agricultural crops using the time series of polar...
Precise phenological calendars, for each cultivated species and variety, are necessary both to highl...
This paper describes the selection of a state-space estimation method for application to the emergin...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
Remote sensing technology allows monitoring the progress of vegetation and crop phenology in large r...
Near-surface cameras, such as those in the PhenoCam network, are a common source of ground truth dat...
Satellite Image Time Series (SITS), such as the ones acquired by the new Sentinel-2 (S2), combine a ...