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Comparison of algorithms for compressed sensing of magnetic resonance images

机译:磁共振图像压缩感测算法的比较

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摘要

Magnetic resonance imaging (MRI) is an essential medical tool with inherently slow data acquisition process. Slow acquisition process requires patient to be long time exposed to scanning apparatus. In recent years significant efforts are made towards the applying Compressive Sensing technique to the acquisition process of MRI and biomedical images. Compressive Sensing is an emerging theory in signal processing. It aims to reduce the amount of acquired data required for successful signal reconstruction. Reducing the amount of acquired image coefficients leads to lower acquisition time, i.e. time of exposition to the MRI apparatus. Using optimization algorithms, satisfactory image quality can be obtained from the small set of acquired samples. A number of optimization algorithms for the reconstruction of the biomedical images is proposed in the literature. In this paper, three commonly used optimization algorithms are compared and results are presented on the several MRI images.
机译:磁共振成像(MRI)是必不可少的医疗工具,其固有的数据采集过程缓慢。缓慢的采集过程要求患者长时间暴露在扫描设备中。近年来,人们在将压缩感测技术应用于MRI和生物医学图像的采集过程中做出了巨大的努力。压缩感测是信号处理中的新兴理论。它旨在减少成功进行信号重建所需的采集数据量。减少获取的图像系数的量导致较短的获取时间,即,暴露于MRI设备的时间。使用优化算法,可以从少量采集的样本中获得令人满意的图像质量。文献中提出了许多用于重建生物医学图像的优化算法。在本文中,比较了三种常用的优化算法,并在几张MRI图像上给出了结果。

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