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Unsupervised target detection in hyperspectral images using projection pursuit

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TLDR
The proposed PP method is to project a high dimensional data set into a low dimensional data space while retaining desired information of interest while utilizing a projection index to explore projections of interestingness.
Abstract: 
The authors present a projection pursuit (PP) approach to target detection. Unlike most of developed target detection algorithms that require statistical models such as linear mixture, the proposed PP is to project a high dimensional data set into a low dimensional data space while retaining desired information of interest. It utilizes a projection index to explore projections of interestingness. For target detection applications in hyperspectral imagery, an interesting structure of an image scene is the one caused by man-made targets in a large unknown background. Such targets can be viewed as anomalies in an image scene due to the fact that their size is relatively small compared to their background surroundings. As a result, detecting small targets in an unknown image scene is reduced to finding the outliers of background distributions. It is known that "skewness," is defined by normalized third moment of the sample distribution, measures the asymmetry of the distribution and "kurtosis" is defined by normalized fourth moment of the sample distribution measures the flatness of the distribution. They both are susceptible to outliers. So, using skewness and kurtosis as a base to design a projection index may be effective for target detection. In order to find an optimal projection index, an evolutionary algorithm is also developed to avoid trapping local optima. The hyperspectral image experiments show that the proposed PP method provides an effective means for target detection.

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Journal ArticleDOI

Anomaly detection and classification for hyperspectral imagery

TL;DR: Experiments show that anomaly classification performs very differently from anomaly detection, which can be implemented in a three-stage process, first by anomaly detection to find potential targets, followed by target discrimination to cluster the detected anomalies into separate target classes, and concluded by a classifier to achieve target classification.
Journal ArticleDOI

A tutorial overview of anomaly detection in hyperspectral images

TL;DR: This tutorial is focused on those techniques that aim to detect small man-made anomalies typically found in defense and surveillance applications, and places emphasis on the techniques that are either mathematically more tractable or easier to interpret physically.
Journal ArticleDOI

Feature Mining for Hyperspectral Image Classification

TL;DR: An overview of both conventional and advanced feature reduction methods, with details on a few techniques that are commonly used for analysis of hyperspectral data.
Journal ArticleDOI

Random-Selection-Based Anomaly Detector for Hyperspectral Imagery

TL;DR: This paper proposes an anomaly detection method based on the random selection of background pixels, the random-selection-based anomaly detector (RSAD), which shows a better performance than the current hyperspectral anomaly detection algorithms and also outperforms its real-time counterparts.
Journal ArticleDOI

A Discriminative Metric Learning Based Anomaly Detection Method

TL;DR: This paper proposes a new anomaly detection method by effectively exploiting a robust anomaly degree metric for increasing the separability between anomaly pixels and other background pixels, using discriminative information.
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