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Medical Image Fusion in Wavelet and Ridgelet Domains: A Comparative Evaluation

机译:小波和脊波域的医学图像融合:比较评价

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Medical image fusion facilitates the retrieval of complementary information from medical images and has been employed diversely for computer-aided diagnosis of life threatening diseases. Fusion has been performed using various approaches such as Pyramidal, Multi-resolution, multi-scale etc. Each and every approach of fusion depicts only a particular feature (i.e. the information content or the structural properties of an image). Therefore, this paper presents a comparative analysis and evaluation of multi-modal medical image fusion methodologies employing wavelet as a multi-resolution approach and ridgelet as a multi-scale approach. The current work tends to highlight upon the utility of these approaches according to the requirement of features in the fused image. Principal Component Analysis (PCA) based fusion algorithm has been employed in both ridgelet and wavelet domains for purpose of minimisation of redundancies. Simulations have been performed for different sets of MR and CT-scan images taken from 'The Whole Brain Atlas'. The performance evaluation has been carried out using different parameters of image quality evaluation like: Entropy (E), Fusion Factor (FF), Structural Similarity Index (SSIM) and Edge Strength (Q_(AB)~F). The outcome of this analysis highlights the trade-off between the retrieval of information content and the morphological details in finally fused image in wavelet and ridgelet domains.
机译:医学图像融合有助于从医学图像中检索补充信息,并已被广泛用于威胁生命的疾病的计算机辅助诊断。已经使用各种方法来执行融合,例如金字塔形,多分辨率,多尺度等。每种融合方法都仅描绘了特定特征(即图像的信息内容或结构特性)。因此,本文对使用小波作为多分辨率方法和脊波作为多尺度方法的多模式医学图像融合方法进行了比较分析和评估。根据融合图像中特征的要求,当前的工作倾向于强调这些方法的实用性。基于主成分分析(PCA)的融合算法已在脊波和小波域中使用,目的是最大限度地减少冗余。已经对从“全脑图集”中获取的不同套MR和CT扫描图像进行了仿真。使用不同的图像质量评估参数进行了性能评估,例如:熵(E),融合因子(FF),结构相似性指数(SSIM)和边缘强度(Q_(AB)〜F)。该分析的结果突出了小波和脊波域中最终融合图像中信息内容的检索与形态细节之间的权衡。

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