In recent decades, large margin methods such as Support Vector Machines (SVMs) are supposed to be the state-of-the-art of supervised learning methods for classification of hyperspectral data. However, the results of these algorithms mainly depend on the quality and quantity of available training data. To tackle down the problems associated with the training data, the researcher put effort into extending the capability of large margin algorithms for unsupervised learning. One of the recent proposed algorithms is Maximum Margin Clustering (MMC). The MMC is an unsupervised SVMs algorithm that simultaneously estimates both the labels and the hyperplane parameters. Nevertheless, the optimization of the MMC algorithm is a non-convex problem. Most...
Abstract—In this paper, a newmethod for supervised hyperspec-tral data classification is proposed. I...
Maximum margin clustering (MMC) has recently attracted considerable interests in both the data minin...
In this paper, we present a new methodology for clustering hyperspectral images. It aims at simultan...
Maximum margin clustering was proposed lately and has shown promising performance in recent studies ...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Hyperspectral remote sensing is recognized as a powerful tool for mineralogical mapping of exposed s...
Band selection is an effective solutions for dimensionality re-duction in hyperspectral imagery. In ...
Maximum margin clustering (MMC), which borrows the large margin heuristic from support vector machin...
In this paper, an efficient semi-supervised support vector machine (SVM) with segmentation-based ens...
Maximum-margin clustering is an extension of the support vector machine (SVM) to clustering. It part...
Hyperspectral image (HSI) clustering is generally a challenging task because of the complex spectral...
Abstract This paper investigates an alternative classification method that integrates class-based af...
Abstract—This paper addresses classification of hyperspectral remote sensing images with kernel-base...
Support vector clustering (SVC) is a boundary-based algorithm, which has several advantages over oth...
Abstract—In this paper, a newmethod for supervised hyperspec-tral data classification is proposed. I...
Maximum margin clustering (MMC) has recently attracted considerable interests in both the data minin...
In this paper, we present a new methodology for clustering hyperspectral images. It aims at simultan...
Maximum margin clustering was proposed lately and has shown promising performance in recent studies ...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Hyperspectral remote sensing is recognized as a powerful tool for mineralogical mapping of exposed s...
Band selection is an effective solutions for dimensionality re-duction in hyperspectral imagery. In ...
Maximum margin clustering (MMC), which borrows the large margin heuristic from support vector machin...
In this paper, an efficient semi-supervised support vector machine (SVM) with segmentation-based ens...
Maximum-margin clustering is an extension of the support vector machine (SVM) to clustering. It part...
Hyperspectral image (HSI) clustering is generally a challenging task because of the complex spectral...
Abstract This paper investigates an alternative classification method that integrates class-based af...
Abstract—This paper addresses classification of hyperspectral remote sensing images with kernel-base...
Support vector clustering (SVC) is a boundary-based algorithm, which has several advantages over oth...
Abstract—In this paper, a newmethod for supervised hyperspec-tral data classification is proposed. I...
Maximum margin clustering (MMC) has recently attracted considerable interests in both the data minin...
In this paper, we present a new methodology for clustering hyperspectral images. It aims at simultan...