You have requested a machine translation of selected content from our databases. This functionality is provided solely for your convenience and is in no way intended to replace human translation. Neither SPIE nor the owners and publishers of the content make, and they explicitly disclaim, any express or implied representations or warranties of any kind, including, without limitation, representations and warranties as to the functionality of the translation feature or the accuracy or completeness of the translations.
Translations are not retained in our system. Your use of this feature and the translations is subject to all use restrictions contained in the Terms and Conditions of Use of the SPIE website.
13 June 2014Effective training set sampling strategy for SVDD anomaly detection in hyperspectral imagery
Anomaly detection (AD) is an important application for target detection in remotely sensed hyperspectral data.
Therefore, variety kinds of methods with different advantages and drawbacks have been proposed for past two decades.
Recently, the kernelized support vector data description (SVDD) based anomaly detection approaches has become
popular as these methods avoid prior assumptions about the distribution of data and provides better generalization to
characterize the background. The global SVDD needs a training set for the background modeling; however, it is sensitive
to outliers in the data; so the training set has to be generated with pure background spectra. In general, the training data is
selected by random selection of the pixels spectra in entire image. In this study, we propose an approach for better
selection of the training data based on principal component analysis (PCA). A valid assumption for remotely sensed
images is that the principal components (PCs) with higher variance include substantial amount of background
information. For this reason, a subspace composed of several of the highest variance PCs of cluttered data can be defined
as background subspace. Thus, with the proposed algorithm, the selection of background pixels is achieved by projecting
all pixels in the image into the background subspace and thresholding them with respect to the relative energy on the
background subspace. Experimental results verify that the proposed algorithm has promising results in terms of accuracy
and speed during the detection of anomalies.
Mustafa Ergul,Nigar Sen, andO. Erman Okman
"Effective training set sampling strategy for SVDD anomaly detection in hyperspectral imagery", Proc. SPIE 9088, Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery XX, 908815 (13 June 2014); https://doi.org/10.1117/12.2051040
The alert did not successfully save. Please try again later.
Mustafa Ergul, Nigar Sen, O. Erman Okman, "Effective training set sampling strategy for SVDD anomaly detection in hyperspectral imagery," Proc. SPIE 9088, Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery XX, 908815 (13 June 2014); https://doi.org/10.1117/12.2051040