Multi-source remote sensing image matching based on contourlet transform and Tsallis entropy[J]. Journal of Remote Sensing, 2010,14(5):893-904. DOI: 10.11834/jrs.20100505.
There are a lot of differences in multi-source remote sensing images from various sensors about the same scene. Maximization of mutual information can be used for the multi-source image matching
but the accuracy and efficiency of image matching need to be further improved. Therefore
an algorithm for multi-source remote sensing image matching was proposed in this paper
based on contourlet transform
Tsallis entropy based mutual information and improved particle swarm optimization. Firstly
the target image and reference image were decomposed to the low resolution image using contourlet transform
respec-tively. Then
a new image similarity measure criterion
the Tsallis entropy based mutual information
was used to achieve the global optimization. Meanwhile
a modified extremum disturbed and simple particle swarm optimization algorithm was applied to match the lowest resolution remote sensing images. Based on the preliminary result
the matching between the higher resolu-tion images could be implemented stepwise up to the full resolution images. The experimental results show that
compared with those of other existing remote sensing image matching methods
the proposed algorithm has the high accuracy
strong robustness and requires much fewer operations.