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Medical image up-sampling using a correlation-based sparse representation model

机译:使用基于相关的稀疏表示模型的医学图像上取样

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In this paper, a correlation guided sparse representation model is proposed for medical images that can be used for up sampling the images. For estimating some of the parameters of the sparse model, the repetitive patterns in the image are analysed. The relation between sparse model and content estimation of the image is explored and this approach is used to adapt the parameters of the existing sparse model. The sparse model works on the basis of dividing the image into several numbers of patches and sparse dictionary learning and then repeating this for a specific number of iterations. The patch size to be taken is passed into the model based on repetitive content in the image thus making the model to rely on the image characteristics. The numerical results obtained by applying this method on brain magnetic resonance images confirm the proposed approach as a better method compared to existing methods.
机译:在本文中,提出了一种用于可以用于采样图像的医学图像的相关引导稀疏表示模型。 为了估计稀疏模型的一些参数,分析图像中的重复模式。 探索了稀疏模型与内容估计之间的关系,并且该方法用于调整现有稀疏模型的参数。 稀疏模型在将图像分为几个修补程序和稀疏字典学习的基础上,然后为特定数量的迭代重复这一点。 要拍摄的待遇尺寸基于图像中的重复内容传递到模型中,从而使模型依赖于图像特征。 通过在脑磁共振图像上应用这种方法获得的数值结果证实了与现有方法相比的更好方法的提出方法。

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