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http://dx.doi.org/10.7780/kjrs.2007.23.6.521

Study on Selection of Optimized Segmentation Parameters and Analysis of Classification Accuracy for Object-oriented Classification  

Lee, Jung-Bin (School of Civil & Environmental Engineering, College of Engineering, Yonsei University)
Eo, Yang-Dam (Agency for Defense Development)
Heo, Joon (School of Civil & Environmental Engineering, College of Engineering, Yonsei University)
Publication Information
Korean Journal of Remote Sensing / v.23, no.6, 2007 , pp. 521-528 More about this Journal
Abstract
The overall objective of this research was to investigate various combination of segmentation parameters and to improve classification accuracy of object-oriented classification. This research presents a method for evaluation of segmentation parameters by calculating Moran's I and Intrasegment Variance. This research used Landsat-7/ETM image of $11{\times}14$ Km developed area in Ansung, Korea. Segmented images are generated by 75 combinations of parameter. Selecting 7 combinations of high, middle and low grade expected classification accuracy was based on calculated Moran's I and Intrasegment Variance. Selected segmentation images are classified 4 classes and analyzed classification accuracy according to method of objected-oriented classification. The research result proved that classification accuracy is related to segmentation parameters. The case of high grade of expected classification accuracy showed more than 85% overall accuracy. On the other hand, low ado showed around 50% overall accuracy.
Keywords
Segmentation; Object-oriented; Parameters; Accuracy Analysis;
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