神经形态工程学
突触重量
稳健性(进化)
计算机科学
调制(音乐)
电子工程
材料科学
记忆电阻器
人工智能
残余物
功率消耗
人工神经网络
光电效应
计算机体系结构
电效率
油藏计算
机器视觉
光调制器
作者
Yuxuan Zeng,Zehai Hou,Zhipeng Yu,Weihua Huang,Wenxing Lv,Qingchen Han,Tianle Zeng,Yanping Luo,Weiming Lv,Bin Fang,Yu Lin,Zhongming Zeng,Lianbo Guo
标识
DOI:10.1002/adfm.202526966
摘要
ABSTRACT Neuromorphic vision computing offers a promising solution to machine vision's arithmetic bottleneck. Single devices integrating perception, processing, and memory functions have attracted considerable interest, though maintaining effective hardware‐software coordination remains challenging. In this work, we demonstrate a neuromorphic vision systems (NVS) incorporating photoelectrically modulation neuromorphic devices with in‐device computing capabilities. The system employs a three‐terminal hardware configuration utilizing a 2D WS 2 /PdSe 2 heterostructure, which exhibits a high on/off ratio of ∼10 6 and minimal power consumption of 2.4 pJ per event. It demonstrates multimodal analog synaptic behaviors under electrical modulation, including robust synaptic plasticity and weight updateability. Notably, under photoelectric modulation, the device not only enables multi‐parameter tuning of synaptic behaviors across a broad spectral range (460, 532, and 660 nm) via optical pulses, but also can realize bidirectional weight update (LTP/LTD) modulation with wide spectral ranges through electrical pulses. Based on this, we developed a multi‐channel attention residual network (MAResNet) for neuromorphic computing, which achieves 92.8% recognition accuracy on the CIFAR‐10 dataset with an average AUC exceeding 0.98. Moreover, the model exhibits interpretable spatial responses and channel selectivity, further verifying the effectiveness and robustness of the neuromorphic computing framework inspired by biological vision. This work paves the way toward high‐accuracy NVS.
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