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Brain CT and MRI medical image fusion scheme Using NSST And Dictionary Learning

机译:基于NSST和字典学习的脑部CT和MRI医学图像融合方案

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Medical image fusion offers an important approach by integrating complimentary features of different imaging modalities to acquire a high-quality image. For the fusion of medical images that it is very helpful to medical exploration and clinical diagnosis. An image fusion method for CT and MRI medical image using nonsubsampled shearlet transform (NSST) and dictionary learning which is based on sparse representation (SR) theory is presented. NSST and dictionary learning are two most extensively used image representation theories. Firstly, the source image is decomposed by NSST to get low frequency coefficients and the high frequency coefficients. Secondly, the high frequency coefficients are merged using the absolute-maximum rule while the low frequency coefficients are fused with a SR-based fusion approach. Finally, the fused image is obtained by inverse NSST. The results show that the proposed method achieves the best performance in both subjective and objective evaluation.
机译:医学图像融合通过集成不同成像方式的互补功能来获取高质量图像,提供了一种重要的方法。对于医学图像的融合,对医学探索和临床诊断非常有帮助。提出了一种基于稀疏表示(SR)理论的基于非下采样的小波变换(NSST)和字典学习的CT和MRI医学图像融合方法。 NSST和字典学习是两种使用最广泛的图像表示理论。首先,利用NSST对源图像进行分解,得到低频系数和高频系数。其次,高频系数使用绝对最大值规则合并,而低频系数则使用基于SR的融合方法进行融合。最后,通过反NSST获得融合图像。结果表明,该方法在主观评价和客观评价方面均达到了最佳效果。

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