Performance
Analysis of Image Fusion Methods in Transform Domain
ABSTRACT
Image fusion involves merging two or more
images in such a way as to retain the most desirable characteristics of each.
There are various image fusion methods and they can be classified into three
main categories: i) Spatial domain, ii) Transform domain, and iii) Statistical
domain. We focus on the transform domain in this paper as spatial domain
methods are primitive and statistical domain methods suffer from a significant
increase of computational complexity. In the field of image fusion, performance
analysis is important since the evaluation result gives valuable information
which can be utilized in various applications, such as military, medical
imaging, remote sensing, and so on. In this paper, we analyze and compare the
performance of fusion methods based on four different transforms: i) wavelet
transform, ii) curvelet transform, iii) contourlet transform and iv)
nonsubsampled contourlet transform. Fusion framework and scheme are explained
in detail, and two different sets of images are used in our experiments.
Furthermore, various performance evaluation metrics are adopted to
quantitatively analyze the fusion results. The comparison results show that the
nonsubsampled contourlet transform method performs better than the other three
methods. During the experiments, we also found out that the decomposition level
of 3 showed the best fusion performance, and decomposition levels beyond
level-3 did not significantly affect the fusion results.
Keywords: Curvelet, contourlet, decomposition,
nonsubsampled contourlet, wavelet
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