Sensors (Feb 2011)

Forest Cover Classification by Optimal Segmentation of High Resolution Satellite Imagery

  • Hyun-Kook Cho,
  • Jun-Hak Lee,
  • Greg S. Biging,
  • Peng Gong,
  • Doo-Ahn Kwak,
  • So-Ra Kim,
  • Woo-Kyun Lee

DOI
https://doi.org/10.3390/s110201943
Journal volume & issue
Vol. 11, no. 2
pp. 1943 – 1958

Abstract

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This study investigated whether high-resolution satellite imagery is suitable for preparing a detailed digital forest cover map that discriminates forest cover at the tree species level. First, we tried to find an optimal process for segmenting the high-resolution images using a region-growing method with the scale, color and shape factors in Definiens® Professional 5.0. The image was classified by a traditional, pixel-based, maximum likelihood classification approach using the spectral information of the pixels. The pixels in each segment were reclassified using a segment-based classification (SBC) with a majority rule. Segmentation with strongly weighted color was less sensitive to the scale parameter and led to optimal forest cover segmentation and classification. The pixel-based classification (PBC) suffered from the “salt-and-pepper effect” and performed poorly in the classification of forest cover types, whereas the SBC helped to attenuate the effect and notably improved the classification accuracy. As a whole, SBC proved to be more suitable for classifying and delineating forest cover using high-resolution satellite images.

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