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Training samples-optimizing based dictionary learning algorithm for MR sparse superresolution reconstruction

机译:基于训练样本优化的字典学习算法用于MR稀疏超分辨率重建

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摘要

Magnetic Resonance (MR) imaging is widely used in diseases diagnosis. The hardware imaging arrives the limitation of resolution, and the high radiation intensity and time of magnetic hurts the human body. The software-based image super-resolution technology is prospective to solve the problem, especially with good excellent performance by sparse reconstruction-based image super-resolution. Dictionary generating is crucial issue of effecting the performance of the super-resolution algorithm, because of without considering the potential discriminative information during dictionary generating. For this problem, we propose the training samples-optimized dictionary learning algorithm for MR sparse super-resolution reconstruction. The gray-consistency & gradient joined diversity-based dictionary representation method is proposed to select the optimal images for the dictionary training. The dictionary training method is evaluated with the framework of sparse reconstruction-based MR imaging. Results show that the proposed dictionary selection framework is feasible and effective to improve the quality of sparse reconstruction based MR super-resolution. (C) 2017 Elsevier Ltd. All rights reserved.
机译:磁共振(MR)成像被广泛用于疾病诊断。硬件成像受到分辨率的限制,并且高辐射强度和磁性时间会伤害人体。基于软件的图像超分辨率技术有望解决该问题,特别是通过基于稀疏重建的图像超分辨率具有良好的优异性能。字典生成是影响超分辨率算法性能的关键问题,因为在字典生成过程中没有考虑潜在的区分性信息。针对此问题,我们提出了针对MR稀疏超分辨率重建的训练样本优化字典学习算法。提出了一种基于灰度一致性和梯度联合分集的字典表示方法,以选择最佳图像进行字典训练。在基于稀疏重建的MR成像框架下评估字典训练方法。结果表明,提出的词典选择框架对于提高基于MR超分辨率的稀疏重建的质量是可行和有效的。 (C)2017 Elsevier Ltd.保留所有权利。

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