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Library Posterior probability-based optimization of texture window size for image classification

Posterior probability-based optimization of texture window size for image classification

Posterior probability-based optimization of texture window size for image classification

Resource information

Date of publication
December 2014
Resource Language
ISBN / Resource ID
AGRIS:US201600057767
Pages
753-762

Texture provides spatial features complementary to spectral information in land cover classification of high spatial resolution imagery. In texture classification, window size is an important factor influencing classification accuracy, but selecting the optimal window size is difficult. In this paper, we propose an optimized window size texture classification method which can solve the window size selection problem. In order to validate the new method, we designed four classification experiments with different input features based on SPOT-5 imagery: (1) spectral features, (2) spectral features and single window size texture features, (3) spectral features and multiple window size texture features and (4) spectral features and optimized window size texture features based on posterior probabilities. Overall, the highest accuracy was obtained using the optimized window size texture classification, which does not require window size selection before classification. Furthermore, the results imply that optimized window size varies with land cover type.

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Authors and Publishers

Author(s), editor(s), contributor(s)

Liu, Jinxiu
Liu, Huiping
Heiskanen, Janne
Mõttus, Matti
Pellikka, Petri

Publisher(s)
Data Provider