Numerical simulations on optoelectronic deep neural network hardware based on self-referential holography

We propose a novel optoelectronic deep neural network (OE-DNN) hardware called the self-referential holographic deep neural network (SR-HDNN). The SR-HDNN features a combination of an optical computing part utilizing a volume hologram and an electronic part connecting the optical elements virtually....

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Bibliographic Details
Published inOptical review (Tokyo, Japan) Vol. 30; no. 3; pp. 387 - 396
Main Authors Tomioka, Rio, Takabayashi, Masanori
Format Journal Article
LanguageEnglish
Published Tokyo Springer Japan 01.06.2023
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ISSN1340-6000
1349-9432
DOI10.1007/s10043-023-00810-2

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Summary:We propose a novel optoelectronic deep neural network (OE-DNN) hardware called the self-referential holographic deep neural network (SR-HDNN). The SR-HDNN features a combination of an optical computing part utilizing a volume hologram and an electronic part connecting the optical elements virtually. Since the shape of a volume hologram, which is a 3-dimensional (3D) refractive index distribution in this case, can be changed by its recording conditions, it is expected to realize the flexible design of optical computing functions by coupling between specific nodes. In addition, the electronic part enables the construction of multi-layer networks without extending the optical system and enabling arbitrary signal processing, including nonlinear operations. By integrating flexible optical and electronic parts, the SR-HDNN consisting of both flexible optical and electronic parts has the potential to maximize the performance of OE-DNN. In this study, we numerically simulate image classification tasks to investigate the feasibility and potential of the SR-HDNN.
ISSN:1340-6000
1349-9432
DOI:10.1007/s10043-023-00810-2