Fast SAR Image Change Detection Using Bayesian Approach Based Difference Image and Modified Statistical Region Merging

A novel fast SAR image change detection method is presented in this paper. Based on a Bayesian approach, the prior information that speckles follow the Nakagami distribution is incorporated into the difference image (DI) generation process. The new DI performs much better than the familiar log ratio...

Full description

Bibliographic Details
Main Authors: Han Zhang, Weiping Ni, Weidong Yan, Hui Bian, Junzheng Wu
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:The Scientific World Journal
Online Access:http://dx.doi.org/10.1155/2014/862875
id doaj-29cc9b3df2484e67a387dcd15ecc2bf4
record_format Article
spelling doaj-29cc9b3df2484e67a387dcd15ecc2bf42020-11-25T02:01:16ZengHindawi LimitedThe Scientific World Journal2356-61401537-744X2014-01-01201410.1155/2014/862875862875Fast SAR Image Change Detection Using Bayesian Approach Based Difference Image and Modified Statistical Region MergingHan Zhang0Weiping Ni1Weidong Yan2Hui Bian3Junzheng Wu4Northwest Institute of Nuclear Technology, Xi’an 710024, ChinaNorthwest Institute of Nuclear Technology, Xi’an 710024, ChinaNorthwest Institute of Nuclear Technology, Xi’an 710024, ChinaNorthwest Institute of Nuclear Technology, Xi’an 710024, ChinaNorthwest Institute of Nuclear Technology, Xi’an 710024, ChinaA novel fast SAR image change detection method is presented in this paper. Based on a Bayesian approach, the prior information that speckles follow the Nakagami distribution is incorporated into the difference image (DI) generation process. The new DI performs much better than the familiar log ratio (LR) DI as well as the cumulant based Kullback-Leibler divergence (CKLD) DI. The statistical region merging (SRM) approach is first introduced to change detection context. A new clustering procedure with the region variance as the statistical inference variable is exhibited to tailor SAR image change detection purposes, with only two classes in the final map, the unchanged and changed classes. The most prominent advantages of the proposed modified SRM (MSRM) method are the ability to cope with noise corruption and the quick implementation. Experimental results show that the proposed method is superior in both the change detection accuracy and the operation efficiency.http://dx.doi.org/10.1155/2014/862875
collection DOAJ
language English
format Article
sources DOAJ
author Han Zhang
Weiping Ni
Weidong Yan
Hui Bian
Junzheng Wu
spellingShingle Han Zhang
Weiping Ni
Weidong Yan
Hui Bian
Junzheng Wu
Fast SAR Image Change Detection Using Bayesian Approach Based Difference Image and Modified Statistical Region Merging
The Scientific World Journal
author_facet Han Zhang
Weiping Ni
Weidong Yan
Hui Bian
Junzheng Wu
author_sort Han Zhang
title Fast SAR Image Change Detection Using Bayesian Approach Based Difference Image and Modified Statistical Region Merging
title_short Fast SAR Image Change Detection Using Bayesian Approach Based Difference Image and Modified Statistical Region Merging
title_full Fast SAR Image Change Detection Using Bayesian Approach Based Difference Image and Modified Statistical Region Merging
title_fullStr Fast SAR Image Change Detection Using Bayesian Approach Based Difference Image and Modified Statistical Region Merging
title_full_unstemmed Fast SAR Image Change Detection Using Bayesian Approach Based Difference Image and Modified Statistical Region Merging
title_sort fast sar image change detection using bayesian approach based difference image and modified statistical region merging
publisher Hindawi Limited
series The Scientific World Journal
issn 2356-6140
1537-744X
publishDate 2014-01-01
description A novel fast SAR image change detection method is presented in this paper. Based on a Bayesian approach, the prior information that speckles follow the Nakagami distribution is incorporated into the difference image (DI) generation process. The new DI performs much better than the familiar log ratio (LR) DI as well as the cumulant based Kullback-Leibler divergence (CKLD) DI. The statistical region merging (SRM) approach is first introduced to change detection context. A new clustering procedure with the region variance as the statistical inference variable is exhibited to tailor SAR image change detection purposes, with only two classes in the final map, the unchanged and changed classes. The most prominent advantages of the proposed modified SRM (MSRM) method are the ability to cope with noise corruption and the quick implementation. Experimental results show that the proposed method is superior in both the change detection accuracy and the operation efficiency.
url http://dx.doi.org/10.1155/2014/862875
work_keys_str_mv AT hanzhang fastsarimagechangedetectionusingbayesianapproachbaseddifferenceimageandmodifiedstatisticalregionmerging
AT weipingni fastsarimagechangedetectionusingbayesianapproachbaseddifferenceimageandmodifiedstatisticalregionmerging
AT weidongyan fastsarimagechangedetectionusingbayesianapproachbaseddifferenceimageandmodifiedstatisticalregionmerging
AT huibian fastsarimagechangedetectionusingbayesianapproachbaseddifferenceimageandmodifiedstatisticalregionmerging
AT junzhengwu fastsarimagechangedetectionusingbayesianapproachbaseddifferenceimageandmodifiedstatisticalregionmerging
_version_ 1724957760566591488