International audienceRemote sensing is a most promising technique for providing crop maps, thanks to the development of satellite images at various temporal and spatial resolutions. Three-dimensional (3D) convolutional neural networks (CNNs) have the potential to provide rich features that represent the spatial and temporal patterns of crops when applied to time series. This study presents a novel 3D-CNN framework for classifying crops that is based on the fusion of radar and optical time series and also fully exploits 3D spatial-temporal information. To extract deep convolutional maps, the proposed technique uses one separate sequence for each time series dataset. To determine the label of each pixel, the extracted feature maps are passed...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
Convolutional neural networks (CNNs) have shown results superior to most traditional image understan...
In recent years, analyzing Synthetic Aperture Radar (SAR) data has turned into one of the challengin...
International audienceRemote sensing is a most promising technique for providing crop maps, thanks t...
International audienceRemote sensing is a most promising technique for providing crop maps, thanks t...
Precise crop classification from multi-temporal remote sensing images has important applications suc...
Precise crop classification from multi-temporal remote sensing images has important applications suc...
Precise crop classification from multi-temporal remote sensing images has important applications suc...
Accurate crop distribution mapping is required for crop yield prediction and field management. Due t...
Classification of crop types from multi-temporal SAR data is a complex task because of the need to e...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
Convolutional neural networks (CNNs) have shown results superior to most traditional image understan...
In recent years, analyzing Synthetic Aperture Radar (SAR) data has turned into one of the challengin...
International audienceRemote sensing is a most promising technique for providing crop maps, thanks t...
International audienceRemote sensing is a most promising technique for providing crop maps, thanks t...
Precise crop classification from multi-temporal remote sensing images has important applications suc...
Precise crop classification from multi-temporal remote sensing images has important applications suc...
Precise crop classification from multi-temporal remote sensing images has important applications suc...
Accurate crop distribution mapping is required for crop yield prediction and field management. Due t...
Classification of crop types from multi-temporal SAR data is a complex task because of the need to e...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
In this paper, we provide an innovative contribution in the research domain dedicated to crop mappin...
Convolutional neural networks (CNNs) have shown results superior to most traditional image understan...
In recent years, analyzing Synthetic Aperture Radar (SAR) data has turned into one of the challengin...