Image segmentation with PCNN model and maximum of variance ratio[J]. Journal of Image and Graphics, 2011, 16(7): 1310-1316. DOI: 10.11834/jig.20110726.
The Pulse Coupled Neural Network (PCNN) model is very suitable for image segmentation. With given parameters
the results of segmentation are determined only by the times of iteration. However
the PCNN model itself cannot automatically discover the optimal iteration times. Therefore
an algorithm based on the maximization of variance ratio criteria is proposed to solve this problem. The algorithm can automatically discover the best iteration times by applying the maximization of variance ratio criteria
and get the best segmentation results. Eventually
the Shannon entropy rule is used to check the segmentation results. The experimental results show that the algorithm can automatically discover the optimal iteration times
the segmentation results are satisfactory
and it improves the speed of PCNN iteration
and it is also more efficient than the automatic segmentation algorithm based 2D-OTSU and cross-entropy.