Hyperspectal image clustering using ant colony optimization(ACO) improved by K-means algorithm

Based on the comparison of K-means algorithm and ant colony optimization (ACO) algorithm in image clustering, this essay proposed a K-means-ACO algorithm to solve the problem of misclassification of K-means and slow convergence of ACO. K-means-ACO algorithm takes the results of K-means as the elicitation information of ACO, which adds illumination probability and illumination pixels in ants seeking rules of ACO, permits ants select nodes according to pheromone concentrations directly instead of probability, makes the elicitation information can be fully without altering the random search quality of ACO. Through the verification of simulation data and real data, the K-means-ACO algorithm can improve the clustering accuracy for adjusting the misclassification of K-means, and improve the ACO's convergence speed.

[1]  John A. Richards,et al.  Remote Sensing Digital Image Analysis , 1986 .

[2]  M. Dorigo,et al.  1 Positive Feedback as a Search Strategy , 1991 .

[3]  Marco Dorigo,et al.  Distributed Optimization by Ant Colonies , 1992 .

[4]  X. Descombes,et al.  Application of ant colony optimization to image classification using a Markov model with non-stationary neighborhoods , 2005, SPIE Remote Sensing.

[5]  Jue Lu A self-adaptive ant colony optimization approach for image segmentation , 2005, International Conference on Space Information Technology.

[6]  Ebroul Izquierdo,et al.  Image Classification Using an Ant Colony Optimization Approach , 2006, SAMT.

[7]  Qin Dai,et al.  Application of ant colony optimization (ACO) algorithm to remote sensing image classification , 2007, International Symposium on Multispectral Image Processing and Pattern Recognition.

[8]  H. A. Babri,et al.  The behavior of k-Means: An empirical study , 2008, 2008 Second International Conference on Electrical Engineering.