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基于深度学习的快速准确声全息生成框架。

Deep Learning-Based Framework for Fast and Accurate Acoustic Hologram Generation.

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 2022 Dec;69(12):3353-3366. doi: 10.1109/TUFFC.2022.3219401. Epub 2022 Nov 24.

Abstract

Acoustic holography has been gaining attention for various applications, such as noncontact particle manipulation, noninvasive neuromodulation, and medical imaging. However, only a few studies on how to generate acoustic holograms have been conducted, and even conventional acoustic hologram algorithms show limited performance in the fast and accurate generation of acoustic holograms, thus hindering the development of novel applications. We here propose a deep learning-based framework to achieve fast and accurate acoustic hologram generation. The framework has an autoencoder-like architecture; thus, the unsupervised training is realized without any ground truth. For the framework, we demonstrate a newly developed hologram generator network, the holographic ultrasound generation network (HU-Net), which is suitable for unsupervised learning of hologram generation, and a novel loss function that is devised for energy-efficient holograms. Furthermore, for considering various hologram devices (i.e., ultrasound transducers), we propose a physical constraint (PC) layer. Simulation and experimental studies were carried out for two different hologram devices, such as a 3-D printed lens, attached to a single element transducer, and a 2-D ultrasound array. The proposed framework was compared with the iterative angular spectrum approach (IASA) and the state-of-the-art (SOTA) iterative optimization method, Diff-PAT. In the simulation study, our framework showed a few hundred times faster generation speed, along with comparable or even better reconstruction quality, than those of IASA and Diff-PAT. In the experimental study, the framework was validated with 3-D printed lenses fabricated based on different methods, and the physical effect of the lenses on the reconstruction quality was discussed. The outcomes of the proposed framework in various cases (i.e., hologram generator networks, loss functions, and hologram devices) suggest that our framework may become a very useful alternative tool for other existing acoustic hologram applications, and it can expand novel medical applications.

摘要

声全息术在各种应用中引起了关注,例如非接触式粒子操纵、非侵入性神经调节和医学成像。然而,只有少数关于如何生成声全息图的研究,即使是传统的声全息算法在快速准确地生成声全息图方面也表现出有限的性能,从而阻碍了新应用的发展。我们在这里提出了一种基于深度学习的框架,以实现快速准确的声全息图生成。该框架具有类似于自动编码器的架构;因此,可以在没有任何真实数据的情况下实现无监督训练。对于该框架,我们展示了一种新开发的全息图生成网络,即全息超声生成网络 (HU-Net),它适合于全息图生成的无监督学习,以及一种新的旨在实现节能全息图的损失函数。此外,为了考虑各种全息图设备(即超声换能器),我们提出了一个物理约束 (PC) 层。针对两种不同的全息图设备(例如,附接到单个元件换能器的 3-D 打印透镜和 2-D 超声阵列)进行了模拟和实验研究。将所提出的框架与迭代角谱方法 (IASA) 和最先进的 (SOTA) 迭代优化方法 Diff-PAT 进行了比较。在模拟研究中,与 IASA 和 Diff-PAT 相比,我们的框架的生成速度快几百倍,同时具有可比甚至更好的重建质量。在实验研究中,使用基于不同方法制造的 3-D 打印透镜对框架进行了验证,并讨论了透镜对重建质量的物理影响。在各种情况下(即全息图生成网络、损失函数和全息图设备)的框架结果表明,我们的框架可能成为其他现有声全息图应用的非常有用的替代工具,并可以扩展新的医学应用。

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