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http://dx.doi.org/10.7780/kjrs.2009.25.3.271

Application of Multiple Threshold Values for Accuracy Improvement of an Automated Binary Change Detection Model  

Yu, Byeong-Hyeok (Department of Geoinformatic Engineering, University of Science & Technology)
Chi, Kwang-Hoon (Geoscience Information Department, Korea Institute of Geoscience & Mineral Resources)
Publication Information
Korean Journal of Remote Sensing / v.25, no.3, 2009 , pp. 271-285 More about this Journal
Abstract
Multi-temporal satellite imagery can be changed into a transform image that emphasizes the changed area only through the application of various change detection techniques. From the transform image, an automated change detection model calculates the optimal threshold value for classifying the changed and unchanged areas. However, the model can cause undesirable results when the histogram of the transform image is unbalanced. This is because the model uses a single threshold value in which the sign is either positive or negative and its value is constant (e.g. -1, 1), regardless of the imbalance between changed pixels. This paper proposes an advanced method that can improve accuracy by applying separate threshold values according to the increased or decreased range of the changed pixels. It applies multiple threshold values based on the cumulative producer's and user's accuracies in the automated binary change detection model, and the analyst can automatically extract more accurate optimal threshold values. Multi-temporal IKONOS satellite imagery for the Daejeon area was used to test the proposed method. A total of 16 transformation results were applied to the two study sites, and optimal threshold values were determined using accuracy assessment curves. The experiment showed that the accuracy of most transform images is improved by applying multiple threshold values. The proposed method is expected to be used in various study fields, such as detection of illegal urban building, detection of the damaged area in a disaster, etc.
Keywords
Automated binary change detection model; multiple threshold values; cumulative producer's and user's accuracies; IKONOS;
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Times Cited By KSCI : 1  (Citation Analysis)
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1 Cakir, H. I., Khorram, S., and Nelson, S. A. C., 2006. Correspondence analysis for detecting land cover change, Remote Sensing of Environment, 102: 306-317   DOI   ScienceOn
2 Im, J., Rhee, J., Jensen, J. R., and Hodgson, M. E., 2007. An automated binary change detection model using a calibration approach, Remote Sensing of Environment, 106: 89-105   DOI   ScienceOn
3 Lu, D., Mausel, P., Batistella, M., and Moran, E., 2005. Land-cover binary change detection methods for use in the moist tropical region of the Amazon: a comparative study, International Journal of Remote Sensing, 26(1): 101-114   DOI   ScienceOn
4 Lunetta, R. S., Ediriwickrema, J., Johnson, D. M., Lyon, J. G., and McKerrow A., 2002. Impacts of vegetation dynamics on the identification of land-cover change in a biologically complex community in North Carolina, USA, Remote Sensing of Environment, 82: 258-270   DOI   ScienceOn
5 Im, J. and Jensen, J. R., 2005. A change detection model based on neighborhood correlation image analysis and decision tree classification, Remote Sensing of Environment, 99: 326-340   DOI   ScienceOn
6 Morisette, J. T. and Khorram, S., 2000. Accuracy assessment curves for satellite- based change detection, Photogrammetric Engineering and Remote Sensing, 66(7): 875-880
7 Aiazzi, B., Baronti, S., Selva, M., and Alparone, L., 2006. Enhanced Gram-Schmidt spectral sharpening based on multivariate regression of MS and Pan data, Proc. of Geoscience and Remote Sensing Symposium 2006, 3789-3792
8 Im, J., 2006. Neighborhood correlation image analysis for change detection using different spatial resolution imagery, Korean Journal of Remote Sensing, 22(5): 337-350   과학기술학회마을   DOI
9 Lu, D. Mausel, P., Brondizio E., and Moran, E., 2004. Change detection techniques, International Journal of Remote Sensing, 25(12): 2365-2407   DOI   ScienceOn