Identification of homogeneous areas within watersheds can help managers and decision makers to administer
watershed policies and sustainable environmental management. These homogeneous areas do not follow the
boundaries of sub-watersheds. This study presents a pixel-based classification approach to demarcate more
realistic homogeneous areas within watersheds with greater details, instead of classification using average
watershed attributes. Remotely sensed indices, such as normalized difference vegetation index (NDVI), leaf area
index (LAI), soil-adjusted vegetation index (SAVI), normalized difference moisture index (NDMI), and information
on land use, elevation, slope, aspect, relative slope position (RSP), and topographic wetness index
(TWI), were derived from MODIS, Landsat, and Terra/ASTER and employed to identify homogeneous areas in
the Karkheh Watershed, west of Iran. The association among variables was tested for multicollinearity, then
fuzzy c-mean clustering approach was used to classify pixels. Two validation criteria of Xie-Beni (XB) and
Fukuyama-Sugeno (FS) were applied to determine the best number of classes. Results of the fuzzy clustering
indicated that the optimum number of homogeneous areas was equal to four (XB=4E-06, and FS=−7232).
The homogeneous areas identified in this study need different management and protection policies, which can
help managers with sustainable environmental management.