Abstract

Classification is the most important method to determine type of crop contained in a region for agricultural planning. There are two types of the classification. First is pixel based and the other is object based classification method. While pixel based classification methods are based on the information in each pixel, object based classification method is based on objects or image objects that formed by the combination of information from a set of similar pixels. Multispectral image contains a higher degree of spectral resolution than a panchromatic image. Panchromatic image have a higher spatial resolution than a multispectral image. Pan sharpening is a process of merging high spatial resolution panchromatic and high spectral resolution multispectral imagery to create a single high resolution color image. The aim of the study was to compare the potential classification accuracy provided by pan sharpened image. In this study, SPOT 5 image was used dated April 2013. 5m panchromatic image and 10m multispectral image are pan sharpened. Four different classification methods were investigated: maximum likelihood, decision tree, support vector machine at the pixel level and object based classification methods. SPOT 5 pan sharpened image was used to classification sun flowers and corn in a study site located at Kadirli region on Osmaniye in Turkey. The effects of pan sharpened image on classification results were also examined. Accuracy assessment showed that the object based classification resulted in the better overall accuracy values than the others. The results that indicate that these classification methods can be used for identifying sun flower and corn and estimating crop areas.

Highlights

  • To determine the crop types is very important for agricultural planning located in a region

  • The image classification algorithms are intensely used in determination of the crop type in remote sensing since they are operable with synoptic view and larger areas

  • Data in 2.5 meter x 5 meter can be provided in panchromatic sensing mode, and data in 10 meter or better resolution can be provided in multi-spectral sensing mode. 4band (Red, Green, Blue and NIR) SPOT 5 image with 10m spatial resolution, dated 2013 was used in the study (Figure 1)

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Summary

Introduction

To determine the crop types is very important for agricultural planning located in a region. The image classification algorithms are intensely used in determination of the crop type in remote sensing since they are operable with synoptic view and larger areas. The image classification is generally considered in two parts such as pixel-based classification and object-based classification. The advanced classification algorithms include the artificial neural networks (ANN), decision trees, support vector machines, and object based image analysis

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