基于核磁共振图像纹理分析的多层核疾病预测

M. Mohan, Anuradha Patil, S. Mohana, P. Subhashini, Sumit Kushwaha, S. M. Pandian
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引用次数: 0

摘要

磁共振图像的去噪传统上是单独进行的,引入了不希望的人工制品,如模糊。为了解决这个问题,本文提供了一个独特的自适应插值架构,同时允许图像数据增强,去噪和细节增强。多层核(MTK)算法根据磁共振数据的数学特征调整外推权重。然后对MTK权重矩阵进行自适应锐化,并使用医师偏差校正来降低医师噪声并改善小细节。经过处理后,噪声消除了非对称源产生的偏置。通过这种方式,自适应MTK将零阶估计方法扩展到更高的回归功率,便于边缘维护和细节恢复。使用真实图像和MR图像(带/不带噪声)的调查结果证明,该算法比传统的基于深度学习的方法提供了更好的恢复结果,但要求和计算负担更少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Tier Kernel for Disease Prediction using Texture Analysis with MR Images
Denoising magnetic resonance images are traditionally done individually, introducing undesired artefacts like blurring. To solve this issue, this paper offers a unique adaptive interpolation architecture that simultaneously allows for image data augmentation, noise removal, and detail augmentation. The multi-tier kernel (MTK) algorithm adjusts the extrapolation weights based on mathematical features in magnetic resonance (MR) data. The MTK weight matrix is then adaptively sharpened, and a Rician bias corrective is used to reduce Rician noise and improve small details. After processing, the noise eliminates the bias produced by the asymmetric sources. The adaptive MTK, in this way, extends the zero ordering estimating methodology to higher regression power facilitating edge maintenance and detail restoration. Investigation outcomes using genuine and MR images (with/without noise) evidenced that the algorithm delivered good restoration outcomes than conventional deep-learning-based approaches but with fewer requirements and calculation burden.
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