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A classification and fuzzy-based approach for digital multi-focus image fusion

机译:一种基于分类和模糊的数字多焦点图像融合方法

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This paper presents a new wavelet-based method for fusion of spatially registered multi-focus images. We have formulated the image fusion process as a two-class classification problem: in and out-of-focus classes. First, a 12–dimensional feature vector using dual-tree discrete wavelet transform (DT-DWT) sub-bands of the source images are extracted, and then a trained two-class fisher classifier projects it to the class labels. The classifier output is used as a decision map for fusing high-frequency wavelet coefficients of multi-focus source images in different directions and decomposition levels of the DT-DWT. In addition, there is an uncertainty for selecting high-frequency wavelet coefficients in smooth regions of source images, which causes some misclassified pixels in the classification output or the decision map. In order to solve this uncertainty and integrate as much information as possible from the source images into the fused image, we propose an algorithm based on fuzzy logic, which combines outputs of two different fusion rules based on a dissimilarity measure from the source images: Selection based on the decision map and weighted averaging. An estimation of the decision map is also used for fusing low-frequency wavelet coefficients of the source images instead of simple averaging. After fusing low- and high-frequency wavelet coefficients of the source images, the final fused image is obtained using the inverse DT-DWT. This new method provides improved subjective and objectives results (more than 4.5 dB on average) as compared to previous fusion methods.
机译:本文提出了一种新的基于小波的空间配准多焦点图像融合方法。我们将图像融合过程公式化为两类分类问题:焦点对准和焦点对准的类别。首先,使用源图像的双树离散小波变换(DT-DWT)子带提取12维特征向量,然后由训练有素的两类Fisher分类器将其投影到类标签上。分类器输出用作决策图,用于融合DT-DWT的不同方向和分解级别的多焦点源图像的高频小波系数。此外,在源图像的平滑区域中选择高频小波系数存在不确定性,这会导致分类输出或决策图中出现一些误分类的像素。为了解决这种不确定性,并将来自源图像的尽可能多的信息集成到融合图像中,我们提出了一种基于模糊逻辑的算法,该算法基于源图像的相异性度量来组合两个不同融合规则的输出:基于决策图和加权平均。决策图的估计也用于融合源图像的低频小波系数,而不是简单的平均。在融合源图像的低频和高频小波系数之后,使用逆DT-DWT获得最终的融合图像。与以前的融合方法相比,这种新方法提供了改进的主观和客观结果(平均超过4.5 dB)。

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