International audienceMany approaches of texture analysis by color or hyperspectral imaging are based on the assumption that the image of a texture can be viewed as a multi-component image, where spatial interactions within and between components are jointly considered (opponent component approach) or not (marginal approach). When color images are coded in multiple color spaces, texture descriptors are based on Multi Color Channel (MCC) representations. By extension, a Multi Spectral Band (MSB) representation can be used to characterize the texture of material surfaces in hyperspectral images. MSB and MCC representations are compared in this paper for texture classification issues. The contribution of each representationis investigated with...
International audienceTexture characterization from the metrological point of view is addressed in o...
With success of Deep Belief Networks (DBNs) in computer vision, DBN has attracted great attention in...
Making a high dimensional (e.g., 100k-dim) feature for hyperspectral image classification seems not ...
This research work presents a supervised classification framework for hyperspectral data that takes ...
Three different approaches to colour texture analysis are tested on the classification of images fro...
One computer disk in pocket inside back cover.System requirements for accompanying computer disk: Ma...
International audienceThis article presents a comparison of different color spaces including RGB, IH...
Traditional image texture measure usually allows a texture description of a single band of the spect...
International audienceThis article presents a comparison of different color spaces including RGB, IH...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
With success of Deep Belief Networks (DBNs) in computer vision, DBN has attracted great attention in...
Making a high dimensional (e.g., 100k-dim) feature for hyperspectral image classification seems not ...
This research work presents a supervised classification framework for hyperspectral data that takes ...
Three different approaches to colour texture analysis are tested on the classification of images fro...
One computer disk in pocket inside back cover.System requirements for accompanying computer disk: Ma...
International audienceThis article presents a comparison of different color spaces including RGB, IH...
Traditional image texture measure usually allows a texture description of a single band of the spect...
International audienceThis article presents a comparison of different color spaces including RGB, IH...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
International audienceTexture characterization from the metrological point of view is addressed in o...
With success of Deep Belief Networks (DBNs) in computer vision, DBN has attracted great attention in...
Making a high dimensional (e.g., 100k-dim) feature for hyperspectral image classification seems not ...