Fuzzy Numerical Morphological approach for Super Resolution of MR Brain Images

Charles Stud Angalakurthi, Ramamurthy Nallagarla
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Abstract

Magnetic resonance imaging (MRI) is an incredible medicinal technology provides relative information regarding the parts of the human body. For the diagnosis, high resolution MR images are essential to extract the detailed information about the diseases. But high resolution (HR) images will be constructed from number of low resolution (LR) images. It is time consuming process to construct a HR image from the number of LR images. However, with the measured single MR images it’s a challenging issue in extracting the detailed information associated to disease for the posterior analysis or treatment. In general, to improve the contrast of MR image histogram equalization has to be performed. In the proposal, for the resolution enhancement of the MR brain images a soft computing approach i.e. fuzzy mathematical approach is implemented. Irrespective of the region, it is possible to manipulate the intensities over the entire region with the help of fuzzy logic so that the resolution will be improved. To analyze the proposal qualitatively and quantitatively different performance image metrics are evaluated like PSNR, entropy etc. And from the results it can be observed that better results are obtained with the proposal when compared with the conventional methods.
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脑磁共振图像超分辨率的模糊数值形态学方法
磁共振成像(MRI)是一项令人难以置信的医疗技术,它提供了有关人体各部位的相关信息。对于诊断,高分辨率的磁共振图像是必不可少的提取疾病的详细信息。而高分辨率图像是由大量的低分辨率图像构建而成的。从大量的LR图像中构建HR图像是一个耗时的过程。然而,对于测量的单个MR图像,提取与疾病相关的详细信息用于后验分析或治疗是一个具有挑战性的问题。一般来说,为了提高磁共振图像的对比度,必须进行直方图均衡化。本文提出了一种软计算方法,即模糊数学方法来增强脑磁共振图像的分辨率。无论哪个区域,在模糊逻辑的帮助下,可以对整个区域的强度进行操纵,从而提高分辨率。为了定性和定量地分析该提议,对不同的性能图像指标进行了评估,如PSNR,熵等。结果表明,与传统方法相比,该方法得到了更好的结果。
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