Abstract :
Preparation of land use maps using traditional methods, in addition to spending a lot of time and
money, is mainly about efficiency and it does not have the necessary accuracy. Today, satellite
imagery and remote sensing techniques have a wide range of applications in all sectors, including
agriculture, natural resources, and land use mapping, due to the provision of timely data and high
analysis capabilities, variety of shapes, digitality, and the possibility of processing. Satellite
imagery Landsat 8 for August 2020 was used, which after making the necessary corrections in the
pre-processing stage, action experimentation or fusion of the desired image using the
panchromatic band and spatial resolution of the image was increased from 30 meters to 15
meters. In the next step, four different classification methods, including backup vector machine,
maximum probability, Mahalanoob distance, and minimum mean distance were compared. The
results showed that the classification method of backup vector machine with average overall
coefficients and kappa of 100 and 1, respectively, has higher accuracy than other methods.
Priority accuracy of classification methods is in the form of backup vector machine, maximum
probability, Mahalanoob distance, and minimum distance from the mean, respectively. Finally, by
assessing the accuracy using user accuracy, producer accuracy, overall accuracy, kappa
coefficient and error matrix, land use map was prepared in three separate classes.
Keywords :
Land Use , Supervised Classification , Kappa Coefficient , Satellite Imagery , Miandoab