The Performance Analysis Based on SAR Sample Covariance Matrix

Multi-channel systems appear in several fields of application in science. In the Synthetic Aperture Radar (SAR) context, multi-channel systems may refer to different domains, as multi-polarization, multi-interferometric or multi-temporal data, or even a combination of them. Due to the inherent speck...

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Main Author: Esra Erten
Format: Article
Language:English
Published: MDPI AG 2012-03-01
Series:Sensors
Subjects:
SAR
Online Access:http://www.mdpi.com/1424-8220/12/3/2766/
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spelling doaj-0942ee62a99841aca98710cda32da0322020-11-24T23:31:19ZengMDPI AGSensors1424-82202012-03-011232766278610.3390/s120302766The Performance Analysis Based on SAR Sample Covariance MatrixEsra ErtenMulti-channel systems appear in several fields of application in science. In the Synthetic Aperture Radar (SAR) context, multi-channel systems may refer to different domains, as multi-polarization, multi-interferometric or multi-temporal data, or even a combination of them. Due to the inherent speckle phenomenon present in SAR images, the statistical description of the data is almost mandatory for its utilization. The complex images acquired over natural media present in general zero-mean circular Gaussian characteristics. In this case, second order statistics as the multi-channel covariance matrix fully describe the data. For practical situations however, the covariance matrix has to be estimated using a limited number of samples, and this sample covariance matrix follow the complex Wishart distribution. In this context, the eigendecomposition of the multi-channel covariance matrix has been shown in different areas of high relevance regarding the physical properties of the imaged scene. Specifically, the maximum eigenvalue of the covariance matrix has been frequently used in different applications as target or change detection, estimation of the dominant scattering mechanism in polarimetric data, moving target indication, etc. In this paper, the statistical behavior of the maximum eigenvalue derived from the eigendecomposition of the sample multi-channel covariance matrix in terms of multi-channel SAR images is simplified for SAR community. Validation is performed against simulated data and examples of estimation and detection problems using the analytical expressions are as well given.http://www.mdpi.com/1424-8220/12/3/2766/multi-channel systemssample eigenvaluesWishart distributionMIMOmaximum eigenvalueSAR
collection DOAJ
language English
format Article
sources DOAJ
author Esra Erten
spellingShingle Esra Erten
The Performance Analysis Based on SAR Sample Covariance Matrix
Sensors
multi-channel systems
sample eigenvalues
Wishart distribution
MIMO
maximum eigenvalue
SAR
author_facet Esra Erten
author_sort Esra Erten
title The Performance Analysis Based on SAR Sample Covariance Matrix
title_short The Performance Analysis Based on SAR Sample Covariance Matrix
title_full The Performance Analysis Based on SAR Sample Covariance Matrix
title_fullStr The Performance Analysis Based on SAR Sample Covariance Matrix
title_full_unstemmed The Performance Analysis Based on SAR Sample Covariance Matrix
title_sort performance analysis based on sar sample covariance matrix
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2012-03-01
description Multi-channel systems appear in several fields of application in science. In the Synthetic Aperture Radar (SAR) context, multi-channel systems may refer to different domains, as multi-polarization, multi-interferometric or multi-temporal data, or even a combination of them. Due to the inherent speckle phenomenon present in SAR images, the statistical description of the data is almost mandatory for its utilization. The complex images acquired over natural media present in general zero-mean circular Gaussian characteristics. In this case, second order statistics as the multi-channel covariance matrix fully describe the data. For practical situations however, the covariance matrix has to be estimated using a limited number of samples, and this sample covariance matrix follow the complex Wishart distribution. In this context, the eigendecomposition of the multi-channel covariance matrix has been shown in different areas of high relevance regarding the physical properties of the imaged scene. Specifically, the maximum eigenvalue of the covariance matrix has been frequently used in different applications as target or change detection, estimation of the dominant scattering mechanism in polarimetric data, moving target indication, etc. In this paper, the statistical behavior of the maximum eigenvalue derived from the eigendecomposition of the sample multi-channel covariance matrix in terms of multi-channel SAR images is simplified for SAR community. Validation is performed against simulated data and examples of estimation and detection problems using the analytical expressions are as well given.
topic multi-channel systems
sample eigenvalues
Wishart distribution
MIMO
maximum eigenvalue
SAR
url http://www.mdpi.com/1424-8220/12/3/2766/
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