Optics and Precision Engineering, Volume. 18, Issue 4, 995(2010)
Image fusion based on pulse coupled neural network
In order to represent a scene exactly and entirely, an image fusion method based on Pulse Coupled Neural Network (PCNN) is proposed.After registering the images of multi-source sensors, obtained images are decomposed into several coefficients of low frequency and high frequency by using the 9/7 wavelet transform based on lifting scheme.The larger absolute gray values are selected to fuse low frequency images and the high frequency images are input to the PCNN, then a serial of fused sub-images can be obtained by comparing firing times after the iteration.Finally,the fused images are obtained by inversing transform using the 9/7 wavelet based on lifting scheme.By means of design of simulation experiments using visible and infrared images, the entropy, average gradient, standard deviation and space frequency are selected to evaluate the fused image.Obtained results show that the entropy, average gradient, standard deviation and space frequency of the fused image by using the novel fusion method base on PCNN are higher 0.010 4, 0.245 9, 0.113 1 and 0.284 6, respectively, than those by using the fusion method combining traditional wavelet and PCNN when a standard source image is used.
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CHEN Hao, ZHU Juan, LIU Yan-ying, WANG Yan-jie. Image fusion based on pulse coupled neural network[J]. Optics and Precision Engineering, 2010, 18(4): 995
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Received: Apr. 23, 2009
Accepted: --
Published Online: Aug. 31, 2010
The Author Email: Hao CHEN (ciompchen@163.com)
CSTR:32186.14.