基于衍射神经网络的全光DCT编码与信息压缩

IF 6.7 1区 物理与天体物理 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
He Ren, YuXiang Feng, Shuai Zhou, Di Wang, Xu Yang, ShouQian Chen
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引用次数: 0

摘要

随着信息技术的进步和数据量的快速增长,对图像传输系统的信息安全性和吞吐量的要求越来越高。衍射神经网络(Diffractive neural networks, dnn)是一种新型的全光信息处理模式,具有处理速度快、能耗低、空间利用率高等优点。这些网络还利用了深度学习方法强大的反向设计能力,使各种图像信息编码技术的有效实现成为可能。离散余弦变换(DCT)是一种广泛应用于图像编码的成熟技术,它与深度神经网络具有线性运算、空频域转换和高并行性等特点。本研究的重点是构建基于深度神经网络架构的全光DCT处理器(DCT - DNN)。测试表明,该处理器在随机矩阵上执行DCT操作,并在特定数据集上实现了基于DCT的压缩。此外,对大尺寸图像的带块DCT进行了验证。DCT-DNN具有高速、低能耗的特点,可以与其他复杂的光电计算系统集成,作为通用的计算加速设备。可以与数据传输系统结合使用,也可以直接集成到图像信息采集系统中,对前端采集的信息进行编码和传输。这使得它成为数据处理、加密和传输应用程序的宝贵工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

All-Optical DCT Encoding and Information Compression Based on Diffraction Neural Network

All-Optical DCT Encoding and Information Compression Based on Diffraction Neural Network
As information technology advances and data volumes grow rapidly, there is an increasing requirement for information security and throughput in image transmission systems. Diffractive neural networks (DNNs), a novel all-optical information processing paradigm, offer several advantages including high-speed processing, low energy consumption, and high spatial utilization. These networks also leverage the powerful reverse-design capabilities of deep learning methods, enabling the efficient implementation of various image information encoding techniques. The discrete cosine transform (DCT), a well-established technology widely used in image encoding, shares features with DNNs, such as linear operations, spatial–frequency domain conversions, and high parallelism. This research focuses on building an all-optical DCT processor based on the DNN architecture (DCT–DNN). Testing revealed that this processor performed DCT operations on random matrices and achieved DCT-based compression on specific data sets. Additionally, the DCT with a block for large-sized images was validated. The DCT–DNN, with its high speed and low energy consumption, can be integrated with other complex optoelectronic computing systems to serve as a general computing device for computational acceleration. Furthermore, it can be combined with data transmission systems or directly integrated into image information collection systems to encode and transmit front-end collected information. This makes it a valuable tool for data processing, encryption, and transmission applications.
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来源期刊
ACS Photonics
ACS Photonics NANOSCIENCE & NANOTECHNOLOGY-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
11.90
自引率
5.70%
发文量
438
审稿时长
2.3 months
期刊介绍: Published as soon as accepted and summarized in monthly issues, ACS Photonics will publish Research Articles, Letters, Perspectives, and Reviews, to encompass the full scope of published research in this field.
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