30 October 2015 Hyperspectral image clustering method based on artificial bee colony algorithm and Markov random fields
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Abstract
Center-oriented hyperspectral image clustering methods have been widely applied to hyperspectral remote sensing image processing; however, the drawbacks are obvious, including the over-simplicity of computing models and underutilized spatial information. In recent years, some studies have been conducted trying to improve this situation. We introduce the artificial bee colony (ABC) and Markov random field (MRF) algorithms to propose an ABC–MRF-cluster model to solve the problems mentioned above. In this model, a typical ABC algorithm framework is adopted in which cluster centers and iteration conditional model algorithm’s results are considered as feasible solutions and objective functions separately, and MRF is modified to be capable of dealing with the clustering problem. Finally, four datasets and two indices are used to show that the application of ABC-cluster and ABC–MRF-cluster methods could help to obtain better image accuracy than conventional methods. Specifically, the ABC-cluster method is superior when used for a higher power of spectral discrimination, whereas the ABC–MRF-cluster method can provide better results when used for an adjusted random index. In experiments on simulated images with different signal-to-noise ratios, ABC-cluster and ABC–MRF-cluster showed good stability.
© 2015 Society of Photo-Optical Instrumentation Engineers (SPIE) 1931-3195/2015/$25.00 © 2015 SPIE
Xu Sun, Lina Yang, Lianru Gao, Bing Zhang, Shanshan Li, and Jun Li "Hyperspectral image clustering method based on artificial bee colony algorithm and Markov random fields," Journal of Applied Remote Sensing 9(1), 095047 (30 October 2015). https://doi.org/10.1117/1.JRS.9.095047
Published: 30 October 2015
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Cited by 9 scholarly publications.
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KEYWORDS
Hyperspectral imaging

Magnetorheological finishing

Optimization (mathematics)

Signal to noise ratio

Computer simulations

Hyperspectral simulation

Image classification

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