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Image fusion based on multi-scale transform and sparse representation: an image energy approach

机译:基于多尺度变换和稀疏表示的图像融合:一种图像能量方法

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摘要

Image fusion is a process to enhance the human perception of different images from the same scene. Nowadays, two popular methods in the signal/image fusion, namely, multi-scale transform (MST) and sparse representation (SR) are being used. This study uses an image energy approach to enhance a fusion rule based on the combination of MST and SR methods. Each source image is first decomposed to its sub-bands using the selected MST method. Then, SR is applied to the low-pass band and maximum absolute (max-abs) rule merges the high-pass bands. The activity level of the sparse coefficients is measured based on the energy differences of the source images. When the gap energy is high enough, a coefficient with maximum L2-norm is selected; otherwise, maximum L1-norm is considered. Finally, by applying inverse MST to the attained bands, the fused image is reconstructed. The popular MSTs, such as discrete wavelet transform, dual-tree complex wavelet transform and non-sub-sampled contourlet are used. The experiments are carried out on several standard and real-life images. The measurement results confirm that the proposed method has enhanced the contrast, clarity and visual information of the fused results.
机译:图像融合是增强人类对同一场景中不同图像的感知的过程。如今,在信号/图像融合中使用了两种流行的方法,即多尺度变换(MST)和稀疏表示(SR)。这项研究使用图像能量方法基于MST和SR方法的组合来增强融合规则。首先使用所选的MST方法将每个源图像分解为其子带。然后,将SR应用于低通频带,并且最大绝对(max-abs)规则合并高通频带。稀疏系数的活动级别是基于源图像的能量差来测量的。当间隙能量足够高时,选择最大 L 2 -范数的系数;否则,将考虑最大 L 1 -范数。最后,通过对获得的频带应用逆MST,可以重建融合图像。使用了流行的MST,例如离散小波变换,双树复数小波变换和非子采样contourlet。实验是在几个标准的和真实的图像上进行的。测量结果证实了所提出的方法增强了融合结果的对比度,清晰度和视觉信息。

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