Edge detection of remote sensing image based on contourlet probability distribution[J]. Journal of Image and Graphics, 2011, 16(10): 1900-1907. DOI: 10.11834/jig.20111006.
We propose a new approach for detecting edges based on Contourlet probability distribution. First we analyze the mixture of Gaussian distribution traits of the Contourlet coefficients. Then we establish the probability model regarding the Contourlet coefficients which can be described by the big state and the small state. At the same time
we separate the linear singular signals on the model of the image. Afterwards
we improve the maximal between-class variance by a threshold selection method based on the variance between different classes and the in-class variance. This can ensure the maximum distance between classes
while simultaneously increasing the degree of polymerization in a class. Furthermore
we use the threshold for the binarization of the separated singular signals and extract the edge message. Compared to traditional methods