An Object-Oriented Binary Change Detection Method Using Nearest Neighbor Classification

Threshold selection is a critical step in using binary change detection methods. The threshold determines the accuracy of change detection results but is highly subjective and scene-dependent, depending on the familiarity with the study area and the analyst’s skill. Nearest neighbor classification is a non-parametric classifier, which was applied to remove the threshold. In order to find the most suitable feature to detect construction and farmland changes, a variety of single and multiple variables were explored. They were regional similarity (RSIM), brightness difference images (BDIs), multi-band difference images (MDIs), multi-band ratio difference images (MRDIs), a combination of RSIM and BDIs (RSIMBD), a combination of RSIM and a optimum band difference and a optimum band ratio difference (RSIMDR), MDIs and MRDIs multiple variable groups. All were tested for two study sites of the bi-temporal SPOT 5 imagery, the results indicated that RSIM, RSIMDR, RSIMBD were significantly better than other single and multiple variables.

[1]  Lorenzo Bruzzone,et al.  Automatic analysis of the difference image for unsupervised change detection , 2000, IEEE Trans. Geosci. Remote. Sens..

[2]  Deren Li Remotely sensed images and GIS data fusion for automatic change detection , 2010 .

[3]  John R. Jensen,et al.  Object‐based change detection using correlation image analysis and image segmentation , 2008 .

[4]  John R. Jensen,et al.  Introductory Digital Image Processing: A Remote Sensing Perspective , 1986 .

[5]  J. R. Jensen,et al.  Enhancing Binary Change Detection Performance Using A Moving Threshold Window (MTW) Approach , 2009 .

[6]  David M. Johnson,et al.  Impacts of vegetation dynamics on the identification of land-cover change in a biologically complex community in North Carolina, USA , 2002 .

[7]  Michael E. Hodgson,et al.  Optimizing the binary discriminant function in change detection applications , 2008 .

[8]  Dengsheng Lu,et al.  Land‐cover binary change detection methods for use in the moist tropical region of the Amazon: a comparative study , 2005 .

[9]  Ashbindu Singh,et al.  Review Article Digital change detection techniques using remotely-sensed data , 1989 .

[10]  Michael E. Hodgson,et al.  An automated binary change detection model using a calibration approach , 2007 .

[11]  M. Ridd,et al.  A Comparison of Four Algorithms for Change Detection in an Urban Environment , 1998 .

[12]  D. Lu,et al.  Change detection techniques , 2004 .

[13]  Volker Walter,et al.  Object-based classification of remote sensing data for change detection , 2004 .

[14]  M. Narasimha Murty,et al.  Partition based pattern synthesis technique with efficient algorithms for nearest neighbor classification , 2006, Pattern Recognit. Lett..

[15]  J. Chan,et al.  Detecting the nature of change in an urban environment : A comparison of machine learning algorithms , 2001 .