In this paper, we propose a novel scale-driven technique for classification of very high geometrical resolution images. This technique is aimed at obtaining accurate and reliable classification maps by properly preserving the geometrical details present in the images and at the same time by accurately representing the homogeneous areas. The proposed method, on the basis of a multi-scale decomposition of the image under investigation, adaptively selects the proper number of scales to be used in the classification of each single pixel. It is composed of three main steps: i) multiscale/multiresolution decomposition of the considered high resolution image; ii) adaptive selection of the set of best representative scales (levels) of each pixel; iii) classification on the basis of the selected scales. In greater detail, in the first step a multiscale/multiresolution decomposition based on the Gaussian Pyramid analysis is applied to the image under investigation. To correctly classify homogene...

A scale-driven classification technique for very high geometrical resolution images

Carlin, Lorenzo;Bruzzone, Lorenzo
2005-01-01

Abstract

In this paper, we propose a novel scale-driven technique for classification of very high geometrical resolution images. This technique is aimed at obtaining accurate and reliable classification maps by properly preserving the geometrical details present in the images and at the same time by accurately representing the homogeneous areas. The proposed method, on the basis of a multi-scale decomposition of the image under investigation, adaptively selects the proper number of scales to be used in the classification of each single pixel. It is composed of three main steps: i) multiscale/multiresolution decomposition of the considered high resolution image; ii) adaptive selection of the set of best representative scales (levels) of each pixel; iii) classification on the basis of the selected scales. In greater detail, in the first step a multiscale/multiresolution decomposition based on the Gaussian Pyramid analysis is applied to the image under investigation. To correctly classify homogene...
2005
Image and Signal Processing for Remote Sensing XI
Bellingham, WA
SPIE
Carlin, Lorenzo; Bruzzone, Lorenzo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/41126
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