Comparison of data gap-filling methods for Landsat ETM SLC-off imagery for monitoring forest degradation in a semi-deciduous tropical forest in Mexico Article uri icon

abstract

  • A number of methods to overcome the 2003 failure of the Landsat 7 Enhanced Thematic Mapper (ETM ) scan-line corrector (SLC) are compared in this article in a forest-monitoring application in the Yucatan Peninsula, Mexico. The objective of this comparison is to determine the best approach to accomplish SLC-off image gap-filling for the particular landscape in this region, and thereby provide continuity in the Landsat data sensor archive for forest-monitoring purposes. Four methods were tested: (1) local linear histogram matching (LLHM); (2) neighbourhood similar pixel interpolator (NSPI); (3) geostatistical neighbourhood similar pixel interpolator (GNSPI); and (4) weighted linear regression (WLR). All methods generated reasonable SLC-off gap-filling data that were visually consistent and could be employed in subsequent digital image analysis. Overall accuracy, kappa coefficients (κ), and quantity and allocation disagreement indices were used to evaluate unsupervised Iterative Self-Organizing Data Analysis (ISODATA) land-cover classification maps. In addition, Pearson correlation coefficients (r) and root mean squares of the error (RMSEs) were employed for estimates agreement with fractional land cover. The best results visually (overall accuracy > 85%25, κ < 9%25, quantity disagreement index < 5.5%25, and allocation disagreement index < 12.5%25) and statistically (r > 0.84 and RMSE < 7%25) were obtained from the GNSPI method. These results suggest that the GNSPI method is suitable for routine use in reconstructing the imagery stack of Landsat ETM SLC-off gap-filled data for use in forest-monitoring applications in this type of heterogeneous landscape. © 2015 Taylor & Francis.
  • A number of methods to overcome the 2003 failure of the Landsat 7 Enhanced Thematic Mapper (ETM%2b) scan-line corrector (SLC) are compared in this article in a forest-monitoring application in the Yucatan Peninsula, Mexico. The objective of this comparison is to determine the best approach to accomplish SLC-off image gap-filling for the particular landscape in this region, and thereby provide continuity in the Landsat data sensor archive for forest-monitoring purposes. Four methods were tested: (1) local linear histogram matching (LLHM); (2) neighbourhood similar pixel interpolator (NSPI); (3) geostatistical neighbourhood similar pixel interpolator (GNSPI); and (4) weighted linear regression (WLR). All methods generated reasonable SLC-off gap-filling data that were visually consistent and could be employed in subsequent digital image analysis. Overall accuracy, kappa coefficients (κ), and quantity and allocation disagreement indices were used to evaluate unsupervised Iterative Self-Organizing Data Analysis (ISODATA) land-cover classification maps. In addition, Pearson correlation coefficients (r) and root mean squares of the error (RMSEs) were employed for estimates agreement with fractional land cover. The best results visually (overall accuracy > 85%25, κ < 9%25, quantity disagreement index < 5.5%25, and allocation disagreement index < 12.5%25) and statistically (r > 0.84 and RMSE < 7%25) were obtained from the GNSPI method. These results suggest that the GNSPI method is suitable for routine use in reconstructing the imagery stack of Landsat ETM%2b SLC-off gap-filled data for use in forest-monitoring applications in this type of heterogeneous landscape. © 2015 Taylor %26 Francis.

publication date

  • 2015-01-01