International audienceGeographic object-based image analysis (GEOBIA) framework has gained increasing interest recently. Following this popular paradigm, we propose a novel multiscale classification approach operating on a hierarchical image representation built from two images at different resolutions. They capture the same scene with different sensors and are naturally fused together through the hierarchical representation, where coarser levels are built from a Low Spatial Resolution (LSR) or Medium Spatial Resolution (MSR) image while finer levels are generated from a High Spatial Resolution (HSR) or Very High Spatial Resolution (VHSR) image. Such a representation allows one to benefit from the context information thanks to the coarser l...
This paper proposes a new generic object recognition system based on multi-scale affineinvariant ima...
In this paper, a fused global saliency-based multiscale multiresolution multistructure local binary ...
Many methods have been recently proposed to deal with the large amount of data provided by high-reso...
International audienceGeographic object-based image analysis (GEOBIA) framework has gained increasin...
International audienceThe geographic object-based image analysis (GEOBIA) framework has gained incre...
International audienceIn this paper we investigate a new hierarchical method for high resolution rem...
In this paper we investigate a new hierarchical method for high resolution remotely sensed image cla...
Abstract—This paper proposes a novel pixel-based system for the supervised classification of very hi...
International audienceTree kernels have demonstrated their ability to deal with hierarchical data, a...
International audienceNowadays, hyperspectral image classification widely copes with spatial informa...
International audienceLand cover mapping has benefited a lot from the introduction of the Geographic...
We introduce a new framework for image classification that extends beyond the window sampling of fix...
We present a framework for image classification that extends beyond the window sampling of fixed spa...
This paper proposes a new generic object recognition system based on multi-scale affineinvariant ima...
In this paper, a fused global saliency-based multiscale multiresolution multistructure local binary ...
Many methods have been recently proposed to deal with the large amount of data provided by high-reso...
International audienceGeographic object-based image analysis (GEOBIA) framework has gained increasin...
International audienceThe geographic object-based image analysis (GEOBIA) framework has gained incre...
International audienceIn this paper we investigate a new hierarchical method for high resolution rem...
In this paper we investigate a new hierarchical method for high resolution remotely sensed image cla...
Abstract—This paper proposes a novel pixel-based system for the supervised classification of very hi...
International audienceTree kernels have demonstrated their ability to deal with hierarchical data, a...
International audienceNowadays, hyperspectral image classification widely copes with spatial informa...
International audienceLand cover mapping has benefited a lot from the introduction of the Geographic...
We introduce a new framework for image classification that extends beyond the window sampling of fix...
We present a framework for image classification that extends beyond the window sampling of fixed spa...
This paper proposes a new generic object recognition system based on multi-scale affineinvariant ima...
In this paper, a fused global saliency-based multiscale multiresolution multistructure local binary ...
Many methods have been recently proposed to deal with the large amount of data provided by high-reso...