A Comparison of Object-oriented and Pixel-based Classification Methods for Mapping Land Cover in Northern Australia

نویسندگان

  • T. Whiteside
  • Tim Whiteside
چکیده

The development of robust object-oriented classification methods suitable for medium to high resolution satellite imagery provides a valid alternative to ‘traditional’ pixel-based methods. This paper compares the results of an object-oriented classification to a supervised pixel-based classification for mapping land cover in the tropical north of the Northern Territory. The object-oriented approach involved the segmentation of image data into objects at multiple scale levels. Objects were assigned class rules using spectral signatures, shape and contextual relationships. The rules were then used as a basis for the fuzzy classification of the imagery. The supervised pixel-based classification involved the selection of training areas and a classification using maximum likelihood algorithm. Accuracy assessments of both classifications were undertaken. A comparison of the results shows better overall accuracy of the object-oriented classification over the pixel-based classification. This object-oriented method provided results with acceptable accuracy; indicating object-oriented analysis has great potential for extracting land cover information from satellite imagery captured over tropical Australia. BIOGRAPHY OF PRESENTER Tim Whiteside is a lecturer within the Natural and Cultural Resource Management Unit in the School of Health, Business and Science at Batchelor Institute of Indigenous Tertiary Education. His teaching areas include plant ecology, vegetation management, GIS and remote sensing. Tim’s research interests focus mainly on the application of remote sensing and GIS technologies as tools for resource management. Tim is also currently a PhD candidate in spatial science at Charles Darwin University.

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تاریخ انتشار 2005