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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Computationally Efficient Adaptive Beamformer for Ultrasound Imaging Based on QR Decomposition
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Computationally Efficient Adaptive Beamformer for Ultrasound Imaging Based on QR Decomposition

机译:基于QR分解的超声成像计算高效自适应波束形成器

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摘要

Adaptive beamforming methods for ultrasound imaging have been studied to improve image resolution and contrast. The most common approach is the minimum variance (MV) beamformer which minimizes the power of the beamformed output while maintaining the response from the direction of interest constant. The method achieves higher resolution and better contrast than the delay-and-sum (DAS) beamformer, but it suffers from high computational cost. This cost is mainly due to the computation of the spatial covariance matrix and its inverse, which requires computations, where denotes the subarray size. In this study, we propose a computationally efficient MV beamformer based on QR decomposition. The idea behind our approach is to transform the spatial covariance matrix to be a scalar matrix and we subsequently obtain the apodization weights and the beamformed output without computing the matrix inverse. To do that, QR decomposition algorithm is used and also can be executed at low cost, and therefore, the computational complexity is reduced to . In addition, our approach is mathematically equivalent to the conventional MV beamformer, thereby showing the equivalent performances. The simulation and experimental results support the validity of our approach.
机译:为了改善图像分辨率和对比度,已经研究了用于超声成像的自适应波束形成方法。最常见的方法是最小方差(MV)波束形成器,它可以将波束形成的输出的功率降至最低,同时保持对感兴趣方向的响应不变。与延迟和(DAS)波束形成器相比,该方法可实现更高的分辨率和更好的对比度,但其计算成本较高。该成本主要归因于空间协方差矩阵及其逆的计算,这需要进行计算,其中表示子阵列的大小。在这项研究中,我们提出了一种基于QR分解的计算有效的MV波束形成器。我们方法背后的想法是将空间协方差矩阵转换为标量矩阵,然后在不计算矩阵逆的情况下获得切趾权重和波束形成的输出。为此,使用了QR分解算法,该算法也可以低成本执行,因此将计算复杂度降低到。另外,我们的方法在数学上等效于常规MV波束形成器,从而显示出等效的性能。仿真和实验结果证明了该方法的有效性。

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