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Original Articles

Application of IR-MAD using synthetically fused images for change detection in hyperspectral data

, , , &
Pages 578-586 | Received 02 Feb 2015, Accepted 03 Jun 2015, Published online: 02 Jul 2015
 

Abstract

The main objective of this letter is to improve the accuracy of unsupervised change detection method and minimize registration errors among multi-temporal images in the change detection process. To this end, iteratively regularized multivariate alteration detection (IR-MAD) is applied to synthetically fused images. First, four synthetically fused hyperspectral images are generated using the block-based fusion method. Then, the IR-MAD is applied to three pairs of the fused images using integrated IR-MAD variates, to decrease the falsely detected changes. To focus on the mis-registration effects, we apply the method to both a correctly registered data-set and a data-set with deliberately misaligned images. In this experiment using multi-temporal Hyperion images, the changed areas are more efficiently detected by our method than by the original IR-MAD algorithm.

Additional information

Funding

This work was supported by the Space Core Technology Development Program through the National Research Foundation of Korea (NRF) and was funded by the Ministry of Science, ICT & Future Planning [grant number NRF-2012M1A3A3A02033469], [grant number NRF-2014M1A3A3A03034798].

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