Title of article :
An Improved Land Use Classification Scheme Using Multi- Seasonal Satellite Images and Secondary Data
Author/Authors :
Mirzaei, S Watershed Management Engineering Department - Natural Resources Faculty - Tarbiat Modares University, Nur, Iran , Vafakhah, M The Centre for Advanced Modelling & Geospatial Information Systems (CAMGIS) - Engineering & Information Technology Faculty - University of Technology Sydney, Ultimo, Australia , Pradhan, B Energy & Mineral Resources Engineering Department - Sejong University, Seoul, South Korea , Alavi, S.j Forestry Department - Natural Resources Faculty - Tarbiat Modares University, Nur, Iran
Abstract :
Aims Generally, optical satellite images are used to produce a land use map. Due to spectral
mixing, these data can affect the accuracy of land use classifications, especially in areas with
diverse vegetation.
Materials & Methods In the present study, in order to achieve the correct land use classification
in a mountainous-forested basin, four Landsat 8 thermal images were used with a few additional
information (Normalized Difference Vegetation Index (NDVI), Digital Elevation Model (DEM),
slope angle and slope aspect) along with optical data and data of multi-temporal images.
Findings Results showed that thermal data, slope angle and DEM have a significant role in
increasing the accuracy of land use classification, so that they increase the overall accuracy by
about 3-10% from late spring to the beginning of autumn. Among the data used, slope angle
and elevation data have a significant role in increasing the accuracy of agricultural classes. The
total accuracy and Kappa coefficient in land use maps obtained from monotemporal images in
the wet season (late spring; 83.93 and 0.82) and early summer (83.79 and 0.81)) are more than
the dry season (late summer; 81.25 and 0.79) and early autumn).
Conclusion Generally, the highest total accuracy among monotemporal images generated from
optical data is about 83.95%, while the application of thermal and additional data along with
optical data and the combination of monotemporal images of the wet season, the accuracy of
the information multitemporal increased to 91.60% of the land use map.
Keywords :
Forested Area , Landsat 8 , Remote Sensing , Land Use Classification
Journal title :
Ecopersia