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Journal ArticleDOI

Kernel matched subspace detectors for hyperspectral target detection

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TLDR
A kernel realization of a matched subspace detector that is based on a subspace mixture model defined in a high-dimensional feature space associated with a kernel function, which showed superior detection performance over the conventional MSD when tested on several synthetic data and real hyperspectral imagery.
Abstract
In this paper, we present a kernel realization of a matched subspace detector (MSD) that is based on a subspace mixture model defined in a high-dimensional feature space associated with a kernel function. The linear subspace mixture model for the MSD is first reformulated in a high-dimensional feature space and then the corresponding expression for the generalized likelihood ratio test (GLRT) is obtained for this model. The subspace mixture model in the feature space and its corresponding GLRT expression are equivalent to a nonlinear subspace mixture model with a corresponding nonlinear GLRT expression in the original input space. In order to address the intractability of the GLRT in the feature space, we kernelize the GLRT expression using the kernel eigenvector representations as well as the kernel trick where dot products in the feature space are implicitly computed by kernels. The proposed kernel-based nonlinear detector, so-called kernel matched subspace detector (KMSD), is applied to several hyperspectral images to detect targets of interest. KMSD showed superior detection performance over the conventional MSD when tested on several synthetic data and real hyperspectral imagery.

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Citations
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Journal ArticleDOI

A Review of Nonlinear Hyperspectral Unmixing Methods

TL;DR: This paper aims to give an historical overview of the majority of nonlinear mixing models and nonlinear unmixing methods, and to explain some of the more popular techniques in detail.
Journal ArticleDOI

Automated Hyperspectral Cueing for Civilian Search and Rescue

TL;DR: The ARCHER system, developed for the civil air patrol, combines a visible/near-infrared hyperspectral imaging system, a high-resolution visible panchromatic imaging sensor, and an integrated geopositioning and inertial navigation unit with onboard real-time processing for data acquisition and correction, precision image georegistration, and target detection and cueing.
Journal ArticleDOI

Sparse Transfer Manifold Embedding for Hyperspectral Target Detection

TL;DR: A novel feature extraction algorithm named sparse transfer manifold embedding (STME) is introduced, which can effectively and efficiently encode the discriminative information from limited training data and the sample distribution information from unlimited test data to find a low-dimensional feature embedding by a sparse transformation.
Journal ArticleDOI

Cognitive Radio Network for the Smart Grid: Experimental System Architecture, Control Algorithms, Security, and Microgrid Testbed

TL;DR: The concept of independent component analysis in combination with the robust principal component analysis technique is employed to recover data from the simultaneous smart meter wireless transmissions in the presence of strong wideband interference.
Journal ArticleDOI

SAR Automatic Target Recognition Using Discriminative Graphical Models

TL;DR: A two-stage target recognition framework that combines the merits of distinct SAR image feature representations with discriminatively learned graphical models is developed that is particularly robust when feature dimensionality is high and number of training images is small.
References
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Eric R. Ziegel
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Detection, Estimation, And Modulation Theory

TL;DR: Detection, estimation, and modulation theory, Detection, estimation and modulation theorists, اطلاعات رسانی کشاورزی .
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