Beamforming with sparse prior in ultrasound medical imaging

Teodora Szasz, A. Basarab, M. Vaida, D. Kouamé
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引用次数: 8

Abstract

Nowadays the classical Delay-and-Sum (DAS) beamformer is extensively used in ultrasound imaging due to its low computational characteristics. However, it suffers from high sidelobe level, poor resolution and low contrast. An alternative is the Minimum-Variance (MV) beamformer which results in a higher image quality both in terms of spatial resolution and contrast. Even so, these benefits come at the expense of a higher computation complexity that limits its real-time capabilities. One solution that recently gained noticeable interest is the exploit of the sparsity of the scanned medium. Based on this assumption, we extend the DAS method to yield sparse results by using the Bayesian Information Criterion (BIC). Our realistic simulations demonstrate that the proposed beamforming (BF) method shows better performance than the classical DAS and MV in terms of lateral resolution, sidelobe reduction and contrast.
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超声医学成像中稀疏先验波束形成
经典的延迟求和波束形成器由于其低计算特性在超声成像中得到了广泛的应用。但它存在副瓣电平高、分辨率差、对比度低等缺点。另一种选择是最小方差(MV)波束形成器,它可以在空间分辨率和对比度方面获得更高的图像质量。即便如此,这些好处是以更高的计算复杂性为代价的,这限制了它的实时能力。最近引起人们注意的一个解决方案是利用扫描介质的稀疏性。基于这一假设,我们利用贝叶斯信息准则(BIC)对DAS方法进行了扩展,得到稀疏结果。仿真结果表明,本文提出的波束形成方法在横向分辨率、旁瓣抑制和对比度方面都优于传统的DAS和MV。
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