An adaptive eigenspace-based beamformer using coherence factor in ultrasound imaging

Shun Zhang, Yuanyuan Wang, Jinhua Yu
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引用次数: 1

Abstract

Since the minimum variance beamformer occurred, adaptive beamformers in ultrasound imaging have been widely studied. Eigenspace-based minimum variance beamformer is an outstanding method which utilizes eigenvalue decomposition to construct signal and noise subspaces, enhancing the contrast of minimum variance beamformer. However, due to the constant threshold by which signal and noise subspaces are separated, the image will be distorted even if its contrast is improved. In this paper, a relationship between the eigenvalue threshold and the coherence factor (CF) is established to adjust the threshold adaptively so that the contrast is retained and the distortion is alleviated. Simulated and experimental data are used to reconstruct the image. Results of the proposed method are compared with results of the eigenspace-based minimum variance beamformer, which proves the validity of the proposed method.
超声成像中使用相干因子的自适应特征空间波束形成器
自最小方差波束形成技术出现以来,自适应波束形成技术在超声成像领域得到了广泛的研究。基于特征空间的最小方差波束形成方法是利用特征值分解构造信噪子空间,提高最小方差波束形成对比度的一种突出方法。然而,由于分离信号和噪声子空间的阈值是恒定的,即使提高了对比度,图像也会失真。本文建立了特征值阈值与相干系数(CF)之间的关系,自适应调整阈值,以保持对比度,减轻失真。利用模拟和实验数据重建图像。将所提方法的结果与基于特征空间的最小方差波束形成器的结果进行了比较,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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