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基于同相信号/正交信号的超快超声成像重建的复杂卷积神经网络。

Complex Convolutional Neural Networks for Ultrafast Ultrasound Imaging Reconstruction From In-Phase/Quadrature Signal.

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 2022 Feb;69(2):592-603. doi: 10.1109/TUFFC.2021.3127916. Epub 2022 Jan 27.

DOI:10.1109/TUFFC.2021.3127916
PMID:34767508
Abstract

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.

摘要

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。

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引用本文的文献

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Improvement in Multi-Angle Plane Wave Image Quality Using Minimum Variance Beamforming with Adaptive Signal Coherence.使用具有自适应信号相干性的最小方差波束形成技术改善多角度平面波图像质量
Sensors (Basel). 2024 Jan 2;24(1):262. doi: 10.3390/s24010262.
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A KL Divergence-Based Loss for In Vivo Ultrafast Ultrasound Image Enhancement with Deep Learning.
一种基于KL散度的损失函数用于深度学习体内超快超声图像增强
J Imaging. 2023 Nov 23;9(12):256. doi: 10.3390/jimaging9120256.
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A Data-Efficient Deep Learning Strategy for Tissue Characterization via Quantitative Ultrasound: Zone Training.基于定量超声的组织特征化数据高效深度学习策略:区域训练。
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