Airborne hyperspectral images can be used to map the land cover in large urban areas, thanks to their very high spatial and spectral resolutions on a wide spectral domain. While the spectral dimension of hyperspectral images is highly informative of the chemical composition of the land surface, the use of state-of-the-art machine learning algorithms to map the land cover has been dramatically limited by the availability of training data. To cope with the scarcity of annotations, semi-supervised and self-supervised techniques have lately raised a lot of interest in the community. Yet, the publicly available hyperspectral data sets commonly used to benchmark machine learning models are not totally suited to evaluate their generalization perfo...
The classification of hyperspectral images on heterogeneous environments without prior knowledge abo...
Accurate land cover classification that ensures robust mapping under diverse acquisition conditions ...
Best Paper AwardInternational audienceHyperspectral images have a strong potential for landcover/lan...
Hyperspectral data are becoming more widely available via sensors on airborne and unmanned aerial ve...
This is a preprint, to read the final version please go to IEEE Geoscience and Remote Sensing Magazi...
textThis research focuses on three critical issues related to land cover classification using hyper...
International audienceHyperspectral imaging is a continuously growing area of remote sensing. Hypers...
Classification of hyperspectral data is very challenging and mapping of land cover is one of its ap...
This paper presents a semi‐supervised learning algorithm called Gaussian process expectation‐maximiz...
International audienceIn recent years, deep learning techniques revolutionized the way remote sensin...
International audienceIn this paper, we tackle the question of discovering an effective set of spati...
The main aim of this research work is to compare k-nearest neighbor algorithm (KNN) supervised class...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
This paper proposes novel autoencoders for unsupervised feature-learning from hyperspectral data. Hy...
Recent developments in remote sensing allow us to acquire enormous quantities of data via ground-bas...
The classification of hyperspectral images on heterogeneous environments without prior knowledge abo...
Accurate land cover classification that ensures robust mapping under diverse acquisition conditions ...
Best Paper AwardInternational audienceHyperspectral images have a strong potential for landcover/lan...
Hyperspectral data are becoming more widely available via sensors on airborne and unmanned aerial ve...
This is a preprint, to read the final version please go to IEEE Geoscience and Remote Sensing Magazi...
textThis research focuses on three critical issues related to land cover classification using hyper...
International audienceHyperspectral imaging is a continuously growing area of remote sensing. Hypers...
Classification of hyperspectral data is very challenging and mapping of land cover is one of its ap...
This paper presents a semi‐supervised learning algorithm called Gaussian process expectation‐maximiz...
International audienceIn recent years, deep learning techniques revolutionized the way remote sensin...
International audienceIn this paper, we tackle the question of discovering an effective set of spati...
The main aim of this research work is to compare k-nearest neighbor algorithm (KNN) supervised class...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
This paper proposes novel autoencoders for unsupervised feature-learning from hyperspectral data. Hy...
Recent developments in remote sensing allow us to acquire enormous quantities of data via ground-bas...
The classification of hyperspectral images on heterogeneous environments without prior knowledge abo...
Accurate land cover classification that ensures robust mapping under diverse acquisition conditions ...
Best Paper AwardInternational audienceHyperspectral images have a strong potential for landcover/lan...