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首页> 外文期刊>Infrared physics and technology >Infrared and low-light-level image fusion based on l(2)-energy minimization and mixed-l(1)-gradient regularization
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Infrared and low-light-level image fusion based on l(2)-energy minimization and mixed-l(1)-gradient regularization

机译:基于L(2)的红外和低光级图像融合,最小化和混合-L(1)-Gradient正则化

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摘要

In order to compensate for the visual defect of the low-light-level image and combine the saliency features of the infrared image, this paper proposes an infrared and low-light-level image fusion model based on l(2)-energy minimization and mixed-l(1)-gradient regularization. First, this novel model uses the non-subsampled shearlet transform (NSST) as a multi-scale decomposition tool to capture the low and high-frequency components of the source images. Because the NSST has good localization characteristics, excellent directional selectivity, parabolic edge characteristics, and translation invariance, it is more suitable for image decomposition and reconstruction. Secondly, for the low-frequency components that reflect the energy information, an optimization model based on l(2)-energy minimization is adopted as its fusion rule. This new rule allows the fused image to have similar pixel intensities to the given infrared image, thus improving the visual observation of the fused image and reducing the influence of the brightness defect under weak light. Thirdly, considering that the l(1)-norm encourages the sparseness of the gradients, this paper uses the l(1)-gradient regularization to guide the fusion of high-frequency components. This method can greatly restore the gradient features hidden in the source images to the fused image so that the fused image will have clearer edge details. In order to verify the effectiveness of the proposed algorithm, we adopted 6 x 6 independent fusion experiments. The final experimental results show that the proposed algorithm has better visual effects in the fusion problem of low-light-level environment, and the performance of objective evaluation is also good, which is better than other existing typical methods.
机译:为了补偿低光级图像的视觉缺陷并结合红外图像的显着性特征,本文提出了一种基于L(2) - 中性最小化的红外和低光级图像融合模型混合-L(1) - 原序列正则化。首先,这部小型模型使用非分配的Shearlet变换(NSST)作为多尺度分解工具,以捕获源图像的低频和高频分量。因为NSST具有良好的本地化特性,优异的定向选择性,抛物线边缘特性和转换不变性,更适合于图像分解和重建。其次,对于反映能量信息的低频分量,采用基于L(2)的优化模型作为其融合规则。该新规则允许熔融图像对给定红外图像具有相似的像素强度,从而改善融合图像的视觉观察并降低弱光下亮度缺陷的影响。第三,考虑到L(1)-norm鼓励梯度的稀疏性,使用L(1)的正则正则化来引导高频分量的融合。该方法可以大大恢复隐藏在源图像中的渐变特征到融合图像,使得融合图像将具有更清晰的边缘细节。为了验证所提出的算法的有效性,我们采用了6 x 6独立的融合实验。最终的实验结果表明,该算法在低光级环境的融合问题中具有更好的视觉效果,客观评价的性能也良好,这比其他现有的典型方法更好。

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