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Journal ArticleDOI

Representative Multiple Kernel Learning for Classification in Hyperspectral Imagery

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TLDR
This paper addresses the MKL for classification in hyperspectral images by extracting the most variation from the space spanned by multiple kernels and proposes a representative MKL (RMKL) algorithm that greatly reduces the computational load for searching optimal combination of basis kernels.
Abstract
Recently, multiple kernel learning (MKL) methods have been developed to improve the flexibility of kernel-based learning machine. The MKL methods generally focus on determining key kernels to be preserved and their significance in optimal kernel combination. Unfortunately, computational demand of finding the optimal combination is prohibitive when the number of training samples and kernels increase rapidly, particularly for hyperspectral remote sensing data. In this paper, we address the MKL for classification in hyperspectral images by extracting the most variation from the space spanned by multiple kernels and propose a representative MKL (RMKL) algorithm. The core idea embedded in the algorithm is to determine the kernels to be preserved and their weights according to statistical significance instead of time-consuming search for optimal kernel combination. The noticeable merits of RMKL consist that it greatly reduces the computational load for searching optimal combination of basis kernels and has no limitation from strict selection of basis kernels like most MKL algorithms do; meanwhile, RMKL keeps excellent properties of MKL in terms of both good classification accuracy and interpretability. Experiments are conducted on different real hyperspectral data, and the corresponding experimental results show that RMKL algorithm provides the best performances to date among several the state-of-the-art algorithms while demonstrating satisfactory computational efficiency.

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Citations
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Journal ArticleDOI

Generalized Composite Kernel Framework for Hyperspectral Image Classification

TL;DR: A new family of generalized composite kernels which exhibit great flexibility when combining the spectral and the spatial information contained in the hyperspectral data, without any weight parameters are constructed.
Journal ArticleDOI

Classification of Hyperspectral Images by Exploiting Spectral–Spatial Information of Superpixel via Multiple Kernels

TL;DR: Experimental results on three widely used real HSIs indicate that the proposed SC-MK approach outperforms several well-known classification methods.
Journal ArticleDOI

Hyperspectral Image Classification With Deep Learning Models

TL;DR: This paper advocates four new deep learning models, namely, 2-D convolutional neural network, 3-D-CNN, recurrent 2- D CNN, recurrent R-2-D CNN, and recurrent 3- D-CNN for hyperspectral image classification.
Journal ArticleDOI

Multiple Feature Learning for Hyperspectral Image Classification

TL;DR: An important characteristic of the presented approach is that it does not require any regularization parameters to control the weights of considered features so that different types of features can be efficiently exploited and integrated in a collaborative and flexible way.
Journal ArticleDOI

Spectral–Spatial Classification of Hyperspectral Image Based on Deep Auto-Encoder

TL;DR: Using collaborative representation-based classification with deep features makes the proposed classifier extremely robust under a small training set, and the proposed method provides encouraging results compared with some related techniques.
References
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Journal ArticleDOI

A Tutorial on Support Vector Machines for Pattern Recognition

TL;DR: There are several arguments which support the observed high accuracy of SVMs, which are reviewed and numerous examples and proofs of most of the key theorems are given.
Proceedings ArticleDOI

A training algorithm for optimal margin classifiers

TL;DR: A training algorithm that maximizes the margin between the training patterns and the decision boundary is presented, applicable to a wide variety of the classification functions, including Perceptrons, polynomials, and Radial Basis Functions.
Journal ArticleDOI

Classification of hyperspectral remote sensing images with support vector machines

TL;DR: This paper addresses the problem of the classification of hyperspectral remote sensing images by support vector machines by understanding and assessing the potentialities of SVM classifiers in hyperdimensional feature spaces and concludes that SVMs are a valid and effective alternative to conventional pattern recognition approaches.
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