International audienceIn this paper, we propose a new unsupervised and automatic method for the selection of training samples. Thanks to this completely unsupervised method, the samples to be used in the learning task are selected according to objective criteria. Using biased or simplified training samples does not allow a rigorous explanation of the physical phenomena represented by the acquired data, especially in hyperspectral imaging. Furthermore, the use of training samples in learning task is of great importance and essential because they strongly affect the obtained results of any algorithm, when they are simplified or biased. The proposed method was tested on the public IRIS database and on synthetic and real hyperspectral images. R...
Supervised learning methods aimed at performing precise predictions by learning from labeled trainin...
In this study, the performance of different hyperspectral classification algorithms with the same tr...
This dissertation presents unsupervised spectral target detection and classification from a statisti...
An unsupervised method for selecting training data is suggested here. The method is tested by applyi...
In this work, we focus on how to select the most highly in-formative samples for effectively trainin...
Feature extraction plays a key role in hyperspectral images classification. Using unlabeled samples,...
Supervised classification is commonly used to produce a thematic map from hyperspectral data. A clas...
In this study, we introduced a novel unsupervised selection method for collecting training samples f...
In this study we introduced a novel unsupervised selection method for collecting training samples fo...
The classification of hyperspectral images is a challenging task due to the high dimensionality of t...
Band selection is a fundamental problem in hyperspectral data processing. In this paper, we present ...
This study investigates the effect of training set selection strategy on classification accuracy of ...
Band selection refers to the process of choosing the most relevant bands in a hyperspectral image. B...
Conventional approaches to training a supervised image classification aim to fully describe all of t...
For digital camera-based spectra recovery, the spectral reflectance of the object being imaged alway...
Supervised learning methods aimed at performing precise predictions by learning from labeled trainin...
In this study, the performance of different hyperspectral classification algorithms with the same tr...
This dissertation presents unsupervised spectral target detection and classification from a statisti...
An unsupervised method for selecting training data is suggested here. The method is tested by applyi...
In this work, we focus on how to select the most highly in-formative samples for effectively trainin...
Feature extraction plays a key role in hyperspectral images classification. Using unlabeled samples,...
Supervised classification is commonly used to produce a thematic map from hyperspectral data. A clas...
In this study, we introduced a novel unsupervised selection method for collecting training samples f...
In this study we introduced a novel unsupervised selection method for collecting training samples fo...
The classification of hyperspectral images is a challenging task due to the high dimensionality of t...
Band selection is a fundamental problem in hyperspectral data processing. In this paper, we present ...
This study investigates the effect of training set selection strategy on classification accuracy of ...
Band selection refers to the process of choosing the most relevant bands in a hyperspectral image. B...
Conventional approaches to training a supervised image classification aim to fully describe all of t...
For digital camera-based spectra recovery, the spectral reflectance of the object being imaged alway...
Supervised learning methods aimed at performing precise predictions by learning from labeled trainin...
In this study, the performance of different hyperspectral classification algorithms with the same tr...
This dissertation presents unsupervised spectral target detection and classification from a statisti...