This paper proposes a band-subset-based clustering and fusion technique to improve the classification performance in hyperspectral imagery. The proposed method can account for the varying data qualities and discrimination capabilities across spectral bands, and utilize the spectral and spatial information simultaneously. First, the hyperspectral data cube is partitioned into several nearly uncorrelated subsets, and an eigenvalue-based approach is proposed to evaluate the confidence of each subset. Then, a nonparametric technique is used to extract the arbitrarily-shaped clusters in spatial-spectral domain. Each cluster offers a reference spectral, based on which a pseudosupervised hyperspectral classification scheme is developed by using ev...
A hyperspectral image (HSI) has many bands, which leads to high correlation between adjacent bands, ...
Hyperspectral images (HSIs) contain large amounts of spectral and spatial information, and this prov...
Abstract—Hyperspectral imaging involves large amounts of in-formation. This paper presents a techniq...
In this study, a new clustering-based feature extraction algorithm is proposed for the spectral-spat...
International audienceA new spectral-spatial classification scheme for hyperspectral images is propo...
The high spectral resolution of hyperspectral images (HSIs) provides rich information but causes dat...
The hyperspectral data contains hundreds of narrows bands representing the same scene on earth, with...
A novel unsupervised band selection method is proposed, where adaptive clustering of spectral compon...
In this thesis, a three-stage algorithm for performing unsupervised segmentation of hyperspectral im...
Recent developments in hyperspectral images have heightened the need for advanced classification met...
Integrating spectral and spatial information is proved effective in improving the accuracy of hypers...
Hyperspectral images and remote sensing are important for many applications. A problem in the use of...
This work introduces the use of co-clustering for hyperspectral image analysis. Co-clustering is abl...
Abstract Spectral clustering is an unsupervised clustering algorithm, and is widely used in the fiel...
Classification is a significant subject in hyperspectral remote sensing image processing. This study...
A hyperspectral image (HSI) has many bands, which leads to high correlation between adjacent bands, ...
Hyperspectral images (HSIs) contain large amounts of spectral and spatial information, and this prov...
Abstract—Hyperspectral imaging involves large amounts of in-formation. This paper presents a techniq...
In this study, a new clustering-based feature extraction algorithm is proposed for the spectral-spat...
International audienceA new spectral-spatial classification scheme for hyperspectral images is propo...
The high spectral resolution of hyperspectral images (HSIs) provides rich information but causes dat...
The hyperspectral data contains hundreds of narrows bands representing the same scene on earth, with...
A novel unsupervised band selection method is proposed, where adaptive clustering of spectral compon...
In this thesis, a three-stage algorithm for performing unsupervised segmentation of hyperspectral im...
Recent developments in hyperspectral images have heightened the need for advanced classification met...
Integrating spectral and spatial information is proved effective in improving the accuracy of hypers...
Hyperspectral images and remote sensing are important for many applications. A problem in the use of...
This work introduces the use of co-clustering for hyperspectral image analysis. Co-clustering is abl...
Abstract Spectral clustering is an unsupervised clustering algorithm, and is widely used in the fiel...
Classification is a significant subject in hyperspectral remote sensing image processing. This study...
A hyperspectral image (HSI) has many bands, which leads to high correlation between adjacent bands, ...
Hyperspectral images (HSIs) contain large amounts of spectral and spatial information, and this prov...
Abstract—Hyperspectral imaging involves large amounts of in-formation. This paper presents a techniq...