Title :
Characterizing location and classification error patterns in time-series thematic maps
Author_Institution :
Technion-Israel Inst. of Technol., Haifa, Israel
Abstract :
Studies the spatial patterns of location error and of classification error in spatio-temporal datasets, assess the role of environmental factors in determining error rate and pattern, and test for possible correlation within and between these error types in space and time. A multiple regression was used to determine the effects of local environmental factors (topography, vegetation cover) on each error type. Topographic structure and vegetation cover had significant effects on location error, where larger error was associated with north-facing aspects, steeper slopes and woody vegetation cover. Classification error was also affected by topography, and vegetation cover. Slope was the major factor that affected classification quality. Strong correlation was found between error in different time steps, for both error types. Correlation between these two error types in the same time step was much smaller and in most cases insignificant.
Keywords :
environmental factors; error analysis; regression analysis; spatiotemporal phenomena; topography (Earth); vegetation mapping; change detection; characterizing location; classification error patterns; environmental factors; error analysis; error estimation; error rate; local environmental factors; location error; misregistration; multiple regression; north facing aspects; spatial patterns; spatiotemporal datasets; steeper slopes; time series thematic maps; topographic structure; topography; woody vegetation cover; Databases; Earth; Environmental factors; Error analysis; Error correction; Space technology; Surfaces; Testing; Uncertainty; Vegetation mapping;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2003.821696