Impervious surface coverage in a region is not only an indicator of the degree of urbanization but also a major indicator of environmental quality.Most of the existing methods of extracting impervious surface based on remote sensing concentrate on an urban scale
but the rapid and accurate methods of extracting impervious surfaces in a basin scale are nearly nonexistent in China and abroad.In this study
we used Landsat images acquired in same season covering the entire Hai Basin as data source
and generated a mask for removing the non-impervious surfaces using a land-use data set of roads
and urban
rural
and industrial land.Then
by selecting bright and dark vegetation endmember
high albedo and low albedo impervious surface endmember
and dry and wet soil endmember
we applied a Multiple Endmember Spectral Mixture Analysis(MESMA) model to extract impervious surfaces in the basin scale.The accuracy assessment results showed high accuracy
in that the mean relative error(MRE) and correlation coefficient(R) of all samples were 12.1% and 0.83
respectively
which indicated that the method of extracting impervious surfaces in a basin scale was feasible.