基于光电忆阻器的传感器内时间序列识别神经网络

IF 2.6 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Zhang Zhang , Qifan Wang , Gang Shi , Gang Liu
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引用次数: 0

摘要

近年来,受多功能图像传感器的启发,结合传感和计算功能的传感器内计算技术成为机器视觉领域的一个新的研究热点,通过赋予传感单元计算能力,避免计算过程中数据的移动,是一种极具前景的突破冯·诺依曼架构的方法。而现有的传感器内计算系统大多只能实现传感器内空间帧的处理,无法融合时间序列信息。为了解决这一限制,实现传感器中时间信息和空间帧的同时处理,需要对传感器中处理单元中的信息进行解耦和处理。本文提出了一种基于光电忆阻器阵列的时间序列识别神经网络。利用光电忆阻器阵列的光塑性和弛豫效应,基于传感器内计算技术,实现了传感器内信息的时序解耦、处理和识别。结果表明,在输入两帧图像的情况下,该网络的时间序列识别准确率达到98.4%,在权值量化和加入40%噪声后,识别率仍达到90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Neural network for in-sensor time series recognition based on optoelectronic memristor

Neural network for in-sensor time series recognition based on optoelectronic memristor
In recent years, inspired by multifunctional image sensors, in-sensor computing technology that combines sensing and computing functions has become a new research hotspot in the field of machine vision, which is an extremely promising way to break through the Von Neumann architecture by equipping the sensing unit with the computing ability and avoiding the data moving in the computation process. Whereas most existing in-sensor computing systems can only realize the processing of spatial frames in-sensor and cannot fuse the time series information. In order to solve this limitation and realize the processing of time information and spatial frames in the sensor at the same time, it is necessary to decouple and process the information in the processing unit in the sensor. In this paper, a time series recognition neural network based on optoelectronic memristor arrays is proposed. By using the optical plasticity and relaxation effects of the optoelectronic memristor arrays and based on the in-sensor computing technology, the information timing decoupling, processing and recognition in the sensor are realized. The results show that the network achieves a time series recognition accuracy of 98.4 % with two frames of image input, and the recognition rate still reaches 90 % after weight quantization and the addition of 40 % noise.
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来源期刊
Microelectronic Engineering
Microelectronic Engineering 工程技术-工程:电子与电气
CiteScore
5.30
自引率
4.30%
发文量
131
审稿时长
29 days
期刊介绍: Microelectronic Engineering is the premier nanoprocessing, and nanotechnology journal focusing on fabrication of electronic, photonic, bioelectronic, electromechanic and fluidic devices and systems, and their applications in the broad areas of electronics, photonics, energy, life sciences, and environment. It covers also the expanding interdisciplinary field of "more than Moore" and "beyond Moore" integrated nanoelectronics / photonics and micro-/nano-/bio-systems. Through its unique mixture of peer-reviewed articles, reviews, accelerated publications, short and Technical notes, and the latest research news on key developments, Microelectronic Engineering provides comprehensive coverage of this exciting, interdisciplinary and dynamic new field for researchers in academia and professionals in industry.
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