4.3 Article

Land-use/land-cover change detection using improved change-vector analysis

Journal

PHOTOGRAMMETRIC ENGINEERING AND REMOTE SENSING
Volume 69, Issue 4, Pages 369-379

Publisher

AMER SOC PHOTOGRAMMETRY
DOI: 10.14358/PERS.69.4.369

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Change-vector analysis (CVA) is a valuable technique for land-use/land-cover change detection. However, how to reasonably determine thresholds of change magnitude and change direction is a bottleneck to its proper application. In this paper, a new method is proposed to improve CVA. The method (the improved CVA) consists of two stages, Double-Window Flexible Pace Search (DFPS), which aims at determining the threshold of change magnitude, and direction cosines of change vectors for determining change direction (category) that combines single-date image classification with a minimum-distance categorizing technique. When the improved CVA was applied to the detection of the land-use/land-cover changes in the Haidian District, Beijing, China, Kappa coefficients of change/ no-change detection and from-to types of change detection were 0.87 and greater than 0.7, respectively, for all kinds of land-use changes. The experimental results indicate that the improved CVA has good potential in land-use/land-cover change detection.

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