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Compressively sensed ultrasound radio-frequency data reconstruction using the combined curvelets and wave atoms basis

机译:结合曲波和波原子的压缩感知超声射频数据重建

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In this paper, we propose a novel data reconstruction method for the compressively sensed ultrasound radio-frequency (RF) data using the combined curvelets- and wave atoms- (CCW) based orthonormal basis. Typically, the curvelets-based reconstruction better preserves the image features while the wave atoms-based reconstruction better preserves the oscillatory patterns of the typical ultrasound RF signals. We exploit the advantages from both the sparsifying bases via concatenating them where the RF reconstruction is done from the larger coefficients of the combined basis. We show that the CCW-based reconstruction method better recovers the RF oscillatory patterns as well as preserves the image features better than those of the curvelets- and wave atoms-based reconstruction methods alone. We find improvement with respect to the current methods of approximately 58% and 64% in terms of the normalized mean square error for the reconstructed synthetic phantom and in vivo RF data, respectively. We also show visual performance improvement in the B-mode images of approximately 33% and 44% in terms of the mean structural similarity for the synthetic phantom and in vivo data, respectively.
机译:在本文中,我们提出了一种新颖的数据重构方法,该方法使用基于曲线波和波原子(CCW)的正交正交基对压缩感测的超声射频(RF)数据进行重构。通常,基于Curvelet的重构可以更好地保留图像特征,而基于波原子的重构可以更好地保留典型超声RF信号的振荡模式。我们通过将两个稀疏碱基的优势结合起来,从而利用合并后的较大系数进行RF重构,从而充分利用了这两个稀疏碱基的优势。我们表明,基于CCW的重建方法比单独基于Curvelet和Wave原子的重建方法更好地恢复了RF振荡模式,并更好地保留了图像特征。对于重构的合成体模和体内RF数据,在归一化均方误差方面,我们发现相对于当前方法而言分别提高了约58%和64%。我们还显示了B型图像的视觉性能改善,分别约为合成体模和体内数据的平均结构相似性的33%和44%。

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