The performance of automatic target detection is affected heavily by complex and unknown scene of natural ground images. In the natural ground images
the Rényi entropy and its occurrence probability
which is calculated through the pseudo Wigner-Ville distribution (PWVD) using two dimension window
has a statistical property based on exponential function. And the statistical property will be changed by the appearing of man-made targets. On that basis
a novel method of saliency map generation and target detection based on Rényi entropy is proposed. At first
the image of Rényi entropy is smoothed by the average filter. Then
by the subtraction of fore-and-aft filter images
the image of residual Rényi entropy can be obtained. The saliency map can be obtained by Gaussian filter. Finally
target detection is completed when the saliency map is segmented by a simple and convenient threshold method. Experimental results demonstrate our method can detect the military targets from complex ground scene effectively. In the test of 14 targets in 8 images
the detection probability and false alarm probability of our method are 100% and not more than 7.1% respectively.