神经形态工程学
宽带
材料科学
机器视觉
卷积神经网络
人工智能
图像传感器
计算机视觉
光电子学
晶体管
光电探测器
计算机科学
电气工程
人工神经网络
工程类
电信
电压
作者
Yuchen Cai,Rui Wang,Xinming Wang,Shuhui Li,Yanrong Wang,Jia Yang,Tao Yan,Xueying Zhan,Ruiqing Cheng,Jun He,Zhenxing Wang
标识
DOI:10.1002/adfm.202212917
摘要
Abstract Bio‐inspired machine visions have caused wide attentions due to the higher time/power efficiencies over the conventional architectures. Although bio‐mimic photo‐sensors and neuromorphic computing have been individually demonstrated, a complete monolithic vision system has rarely been studied. Here, a neuromorphic machine vision system (NMVS) integrating front‐end retinomorphic sensors and a back‐end convolutional neural network (CNN) based on a single ferroelectric‐semiconductor‐transistor (FST) device structure is reported. As a photo‐sensor, the FST shows a broadband (275–808 nm) retina‐like light adaption function with a large dynamic range of 20.3 stops, and as a unit of the CNN, the FST's weight can be linearly programmed. In total, the NMVS has a high recognition accuracy of 93.0% on a broadband‐dim‐image classification task, which is 20% higher than that of an incomplete system without the retinomorphic sensors. Because of the monolithic unit, the NVMS shows high feasibility for integrated bio‐inspired machine vision systems.
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