Feature extraction plays a key role in hyperspectral images classification. Using unlabeled samples, often unlimitedly available, unsupervised and semisupervised feature extraction methods show better performance when limited number of training samples exists. This paper illustrates the importance of selecting appropriate unlabeled samples that used in feature extraction methods. Also proposes a new method for unlabeled samples selection using spectral and spatial information. The proposed method has four parts including: PCA, prior classification, posterior classification and sample selection. As hyperspectral image passes these parts, selected unlabeled samples can be used in arbitrary feature extraction methods. The effectiveness of the ...
Band selection is a fundamental problem in hyperspectral data processing. In this paper, we present ...
Joint spectral-spatial information based classification is an active topic in hyperspectral remote s...
Abstract—In this paper, a band selection technique for hyperspectral image data is proposed. Supervi...
Hyperspectral data provides rich information and is very useful for a range of applications from gro...
An unsupervised method for selecting training data is suggested here. The method is tested by applyi...
Supervised classification is commonly used to produce a thematic map from hyperspectral data. A clas...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Feature extraction (FE) or dimensionality reduction (DR) plays quite an important role in the field ...
In this work, we focus on how to select the most highly in-formative samples for effectively trainin...
We propose a novel semisupervised local discriminant analysis method for feature extraction in hyper...
Obtaining relevant classification results for hyperspectral images depends on the quality of the dat...
International audienceIn this paper, we propose a new unsupervised and automatic method for the sele...
Feature extraction plays an essential role in Hyperspectral image classification. Linear discriminan...
Hyperspectral classification with limited training samples is challenging. The current work lies in ...
Band selection is a fundamental problem in hyperspectral data processing. In this paper, we present ...
Joint spectral-spatial information based classification is an active topic in hyperspectral remote s...
Abstract—In this paper, a band selection technique for hyperspectral image data is proposed. Supervi...
Hyperspectral data provides rich information and is very useful for a range of applications from gro...
An unsupervised method for selecting training data is suggested here. The method is tested by applyi...
Supervised classification is commonly used to produce a thematic map from hyperspectral data. A clas...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Feature extraction (FE) or dimensionality reduction (DR) plays quite an important role in the field ...
In this work, we focus on how to select the most highly in-formative samples for effectively trainin...
We propose a novel semisupervised local discriminant analysis method for feature extraction in hyper...
Obtaining relevant classification results for hyperspectral images depends on the quality of the dat...
International audienceIn this paper, we propose a new unsupervised and automatic method for the sele...
Feature extraction plays an essential role in Hyperspectral image classification. Linear discriminan...
Hyperspectral classification with limited training samples is challenging. The current work lies in ...
Band selection is a fundamental problem in hyperspectral data processing. In this paper, we present ...
Joint spectral-spatial information based classification is an active topic in hyperspectral remote s...
Abstract—In this paper, a band selection technique for hyperspectral image data is proposed. Supervi...