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Medical image fusion based on nonsubsampled shearlet transform and principal component averaging

机译:基于非法掌握剪切变换的医学图像融合和主成分平均值

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摘要

Medical image fusion has a crucial role in many areas of modern medicine like diagnosis and therapy planning. Methods based on principal component analysis (PCA) have been extensively used in area of medical image fusion due to their computational simplicity. Methods based on multiresolution analysis are of attraction now due to their ability in extracting image details. A new method is proposed in this paper to benefit from these advantages. For this aim, firstly, images are transformed into multiscale space based on nonsubsampled shearlet transform (NSST). Secondly, principal components and weights of each subband are calculated. Averaging them yields weights necessary for fusion step. Finally, fused image is achieved by merging source images according to weights. Quantitative and qualitative analysis prove outperformance of our methods compared to well-known fusion methods and improvement compared to subsequent best method, in terms of standard deviation (+4.51%), entropy (+6.88%), structural similarity (+1.35%), signal to noise ratio (+7.57%) and fusion performance metric (+3.81%).
机译:医学图像融合在诊断和治疗规划的许多现代医学领域具有至关重要的作用。基于主成分分析(PCA)的方法由于其计算简单而广泛地用于医学图像融合区域。由于它们在提取图像细节的能力,基于多分辨率分析的方法是吸引力。本文提出了一种新方法,可以从这些优势中受益。为此目的,首先,图像基于非虚拟机的Shearlet变换(NSST)转换为多尺度空间。其次,计算每个子带的主成分和权重。平均它们产生融合步骤所需的重量。最后,通过根据权重合并源图像来实现融合图像。定量和定性分析证明了我们的方法的表现与众所周知的融合方法和改进与随后的最佳方法相比,在标准偏差(+ 4.51%)方面,熵(+ 6.88%),结构相似性(+ 1.35%),信噪比(+ 7.57%)和融合性能度量(+ 3.81%)。

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