IEEE Trans Ultrason Ferroelectr Freq Control. 2022 Feb;69(2):592-603. doi: 10.1109/TUFFC.2021.3127916. Epub 2022 Jan 27.
Ultrafast ultrasound imaging remains an active area of interest in the ultrasound community due to its ultrahigh frame rates. Recently, a wide variety of studies based on deep learning have sought to improve ultrafast ultrasound imaging. Most of these approaches have been performed on radio frequency (RF) signals. However, in- phase/quadrature (I/Q) digital beamformers are now widely used as low-cost strategies. In this work, we used complex convolutional neural networks for reconstruction of ultrasound images from I/Q signals. We recently described a convolutional neural network architecture called ID-Net, which exploited an inception layer designed for reconstruction of RF diverging-wave ultrasound images. In the present study, we derive the complex equivalent of this network, i.e., complex-valued inception for diverging-wave network (CID-Net) that operates on I/Q data. We provide experimental evidence that CID-Net provides the same image quality as that obtained from RF-trained convolutional neural networks, i.e., using only three I/Q images, CID-Net produces high-quality images that can compete with those obtained by coherently compounding 31 RF images. Moreover, we show that CID-Net outperforms the straightforward architecture that consists of processing real and imaginary parts of the I/Q signal separately, which thereby indicates the importance of consistently processing the I/Q signals using a network that exploits the complex nature of such signals.
由于其超高的帧率,超快速超声成像是超声领域中一个活跃的研究领域。最近,基于深度学习的各种研究都试图改进超快速超声成像。这些方法大多是基于射频 (RF) 信号的。然而,同相/正交 (I/Q) 数字波束形成器现在已被广泛用作低成本策略。在这项工作中,我们使用复卷积神经网络从 I/Q 信号重建超声图像。我们最近描述了一种名为 ID-Net 的卷积神经网络架构,该架构利用了专为重建 RF 发散波超声图像而设计的 inception 层。在本研究中,我们推导出了该网络的复等价物,即用于发散波网络的复 inception(CID-Net),它可对 I/Q 数据进行操作。我们提供了实验证据,证明 CID-Net 提供了与从 RF 训练的卷积神经网络获得的相同的图像质量,即仅使用三个 I/Q 图像,CID-Net 即可生成高质量的图像,这些图像可与通过相干地组合 31 个 RF 图像获得的图像相媲美。此外,我们还表明,CID-Net 优于由分别处理 I/Q 信号的实部和虚部组成的简单架构,这表明使用利用此类信号的复特性的网络一致地处理 I/Q 信号非常重要。