Abstract- Land cover classification requires both temporal and spatial information. Indeed, vegetation temporal evolution is necessary to discriminate the different land cover types. This information can be derived from coarse resolution sensors such as MERIS (300×300m2 pixel size), or SPOT/VGT (1km2 pixel size), whereas high resolution images, such as SPOT4/HRV ones (20×20m2 pixel size), contain the required spatial information. In this paper, a new method is proposed to perform an efficient land cover classification using these two kinds of remote sens-ing data. This method is based on Bayesian theory and on the linear mixture model permitting, through a simulated anneal-ing algorithm, to perform a high resolution classification from a co...
Geospatial analysis involves application of statistical methods, algorithms and information retrieva...
Obtaining accurate and timely land cover information is an important topic in many remote sensing ap...
International audienceAutomatic land cover classification from satellite image time series is of par...
International audienceLand cover classification requires both temporal and spatial information. Inde...
International audienceIn this paper we present a framework to generate a land cover classification f...
International audienceIn this paper, a new method is presented for a subpixelic land cover classific...
In this study, we focus on the problem of vegetation moni-toring and change detection from remote se...
High-spatial-resolution (HSR) images and high-temporal-resolution (HTR) images have their unique adv...
An approach based on Gaussian Processes (GP) for land cover pixel-based classification with Sentinel...
Knowledge of land cover type and vegetation condition at continental-to-global scales is critical fo...
This thesis focuses on the land cover analysis and monitoring from remote sensing time series. The u...
Studies of land cover dynamics would benefit greatly from the generation of land cover maps at both ...
International audienceIn this paper, we present a new method for subpixelic land-cover change detect...
This article presents a set of techniques developed to classify land cover on a per-parcel (herein t...
Geospatial analysis involves application of statistical methods, algorithms and information retrieva...
Obtaining accurate and timely land cover information is an important topic in many remote sensing ap...
International audienceAutomatic land cover classification from satellite image time series is of par...
International audienceLand cover classification requires both temporal and spatial information. Inde...
International audienceIn this paper we present a framework to generate a land cover classification f...
International audienceIn this paper, a new method is presented for a subpixelic land cover classific...
In this study, we focus on the problem of vegetation moni-toring and change detection from remote se...
High-spatial-resolution (HSR) images and high-temporal-resolution (HTR) images have their unique adv...
An approach based on Gaussian Processes (GP) for land cover pixel-based classification with Sentinel...
Knowledge of land cover type and vegetation condition at continental-to-global scales is critical fo...
This thesis focuses on the land cover analysis and monitoring from remote sensing time series. The u...
Studies of land cover dynamics would benefit greatly from the generation of land cover maps at both ...
International audienceIn this paper, we present a new method for subpixelic land-cover change detect...
This article presents a set of techniques developed to classify land cover on a per-parcel (herein t...
Geospatial analysis involves application of statistical methods, algorithms and information retrieva...
Obtaining accurate and timely land cover information is an important topic in many remote sensing ap...
International audienceAutomatic land cover classification from satellite image time series is of par...