4.5 Article

A deep learning approach for the fast generation of acoustic hologramsa)

期刊

JOURNAL OF THE ACOUSTICAL SOCIETY OF AMERICA
卷 149, 期 4, 页码 2312-2322

出版社

ACOUSTICAL SOC AMER AMER INST PHYSICS
DOI: 10.1121/10.0003959

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资金

  1. Ministry of Science and Technology Key Research and Development Plan of China [2018YFC0115900]
  2. National Natural Science Foundation of China [11974372, 11674346, 11774369, 11534013, 81527901, 11804359]
  3. Shenzhen Double Chain Grant [[2018]256]
  4. Shenzhen key laboratory of ultrasound imaging and therapy Grant [ZDSYS201802061806314]
  5. Shenzhen Basic Research Program [JCYJ20170818163258397]
  6. Chinese Academy of Sciences [YJKYYQ20190078]

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This paper proposes a deep learning approach based on U-Net for rapidly generating acoustic holograms with improved reconstruction quality and significantly accelerated generation speed. The proposed method can serve as a smart platform for rapidly generating holograms for complex or dynamic target images, opening up new possibilities for real-time acoustic-hologram-based applications.
Acoustic holographic techniques are crucial in diverse applications, such as three-dimensional holographic display and particle manipulation. However, conventional methods for computer-generated acoustics holography rely heavily on iterative optimization algorithms, which are time-consuming and particularly hinder their capacity of generating a dynamic hologram in real time. Here, a deep learning approach based on U-Net is proposed to rapidly generate an acoustic hologram with optimal amplitude and phase maps. It is demonstrated that, after being trained with adequate data that are numerically synthesized by the pseudo-inverse method, the proposed deep learning approach can generate both amplitude and phase maps for new target images with an improved overall reconstruction quality. Remarkably, after the offline cost is compensated by a lower online cost for the proposed DL approach, the hologram generation speed is significantly accelerated by the proposed deep learning approach as compared with the pseudo-inverse method, especially for complicated or dynamic images. With the hierarchical feature learning capability and the fast online computational speed, the proposed deep learning approach can serve as a smart platform for rapidly generating complete maps of holograms for the sophisticated or dynamical target images, leading to the new possibility of real-time acoustic-hologram-based applications.

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