Abstract
Change detection is usually treated as a problem of explicitly detecting land cover transitions in satellite images obtained at different times, and helps with emergency response and government management. This study presents an unsupervised change detection method based on the image fusion of multi-temporal images. The main objective of this study is to improve the accuracy of unsupervised change detection from high-resolution multi-temporal images. Our method effectively reduces change detection errors, since spatial displacement and spectral differences between multi-temporal images are evaluated. To this end, a total of four cross-fused images are generated with multi-temporal images, and the iteratively reweighted multivariate alteration detection (IR-MAD) method—a measure for the spectral distortion of change information—is applied to the fused images. In this experiment, the land cover change maps were extracted using multi-temporal IKONOS-2, WorldView-3, and GF-1 satellite images. The effectiveness of the proposed method compared with other unsupervised change detection methods is demonstrated through experimentation. The proposed method achieved an overall accuracy of 80.51% and 97.87% for cases 1 and 2, respectively. Moreover, the proposed method performed better when differentiating the water area from the vegetation area compared to the existing change detection methods. Although the water area beneath moderate and sparse vegetation canopy was captured, vegetation cover and paved regions of the water body were the main sources of omission error, and commission errors occurred primarily in pixels of mixed land use and along the water body edge. Nevertheless, the proposed method, in conjunction with high-resolution satellite imagery, offers a robust and flexible approach to land cover change mapping that requires no ancillary data for rapid implementation.
Highlights
International and national institutions require information about the landscape and environment to support decision-makers, and Earth observation techniques are advanced tools that can meet this requirement [1]
We proposed a combination of image fusion and spectral distortion measures as an unsupervised change detection methodology for land cover change detection
IKONOS-2, WorldView-3 images, and GF-1, the proposed method based on cross-fused images and multivariate alteration detection (MAD) variates was applied to increase the accuracy of change detection and minimize the error detection
Summary
International and national institutions require information about the landscape and environment to support decision-makers, and Earth observation techniques are advanced tools that can meet this requirement [1]. As the landscape is not static, Earth observations should focus on mapping the static environment, and on detecting changes, in order to meet the needs of contemporary users. Monitoring land cover changes is related to living space and social development, Remote Sens. 2017, 9, 804 and this has forced policy-makers to include land cover conditions as issues of national importance. Monitoring land cover conditions and changes requires accurate and rapid acquisition of the necessary information about the extent and severity of the changes. Change detection techniques can be used to quickly estimate land cover condition. For a better understanding of the land cover situation, timely and accurate change detection of the land cover region helps proper management of restoration plans
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