A new approach for discrimination of objects on hyperspectral images, which combines state-of-art image processing methods and multivariate image analysis, is proposed. The basic idea of the approach is to build a joint principal component space for all objects' pixels, detect patterns, pixels from a particular object shared in this space, and use quantitative evaluation of the patterns as the objects' features. The approach was particularly developed for dealing with challenging cases, when objects from different classes have many similar pixels. It has been tested on several real cases and showed very promising results
Target detection of hyperspectral image has always been a hot research topic, especially due to its ...
Comparison in the RGB domain is not suitable for precise color matching, due to the strong dependenc...
Abstract. Edge detection is well developed area of image analysis. Many various kinds of techniques ...
Hyperspectral imaging is a modern analytical technique combining benefits of digital imaging and vib...
This paper presents a novel approach to feature selection for the classification of hyperspectral im...
Hyperspectral data provides rich information and is very useful for a range of applications from gro...
Hyperspectral imagers based on interferometry associate with each pixel of the image the spectrum ca...
This paper presents a novel approach to feature selection for the classification of hyperspectral im...
This article proposes a generic framework to process jointly the spatial and spectral information of...
This work proposes a new method to treat spatial and spectral information interactively. The method ...
International audienceThe recent advances in hyperspectral remote sensing technology allow the simul...
Hyperspectral imaging (HSI) sensors provide plenty of spectral information to uniquely identify mate...
We study the multi-view feature extraction (MV-FE) framework for the classification of hyperspectral...
Feature extraction plays an essential role in Hyperspectral image classification. Linear discriminan...
Abstract—This paper presents a novel approach to feature se-lection for the classification of hypers...
Target detection of hyperspectral image has always been a hot research topic, especially due to its ...
Comparison in the RGB domain is not suitable for precise color matching, due to the strong dependenc...
Abstract. Edge detection is well developed area of image analysis. Many various kinds of techniques ...
Hyperspectral imaging is a modern analytical technique combining benefits of digital imaging and vib...
This paper presents a novel approach to feature selection for the classification of hyperspectral im...
Hyperspectral data provides rich information and is very useful for a range of applications from gro...
Hyperspectral imagers based on interferometry associate with each pixel of the image the spectrum ca...
This paper presents a novel approach to feature selection for the classification of hyperspectral im...
This article proposes a generic framework to process jointly the spatial and spectral information of...
This work proposes a new method to treat spatial and spectral information interactively. The method ...
International audienceThe recent advances in hyperspectral remote sensing technology allow the simul...
Hyperspectral imaging (HSI) sensors provide plenty of spectral information to uniquely identify mate...
We study the multi-view feature extraction (MV-FE) framework for the classification of hyperspectral...
Feature extraction plays an essential role in Hyperspectral image classification. Linear discriminan...
Abstract—This paper presents a novel approach to feature se-lection for the classification of hypers...
Target detection of hyperspectral image has always been a hot research topic, especially due to its ...
Comparison in the RGB domain is not suitable for precise color matching, due to the strong dependenc...
Abstract. Edge detection is well developed area of image analysis. Many various kinds of techniques ...