多光谱图像
遥感
计算机科学
图像传感器
多光谱模式识别
计算机视觉
人工智能
图像(数学)
模式识别(心理学)
地质学
作者
Yanni Zou,Yan Liu,Xiaolong Zhao,Yilin Wang,Yuxia Xin,Haoyan Zhan,Xiao Feng,Shunjie Yu,Weitao Ding,Zhitao Fu,Xiaohu Hou,Shibing Long
出处
期刊:ACS Nano
[American Chemical Society]
日期:2025-08-19
标识
DOI:10.1021/acsnano.5c03453
摘要
Through the integration of sensing and computing functions into a single photosynapse, the neuromorphic visual system mitigates the substantial data redundancy caused by frequent data conversion and transmission in Von Neumann architectures. However, most reported photosynapses can produce unidirectional light responses only without electric modulation and are limited to narrow spectral ranges, which limits their effectiveness in target recognition in complex real-world optical scenes. Here, we present a four-color reservoir computing (RC) system based on an opposite photogating (OPG)-engineered multispectral photosynapse. The OPG effect, characterized by light-modulated oppositely shifted threshold voltage (Vth), originates from different carrier dynamics in a Ga2O3/WSe2 heterojunction field-effect transistor. Specifically, hole trapping in Ga2O3 under deep ultraviolet (DUV) light induces negative Vth shifts (excitatory responses), while electron trapping in WSe2 under visible light causes positive Vth shifts (inhibitory responses). The nonlinear photoresponse and tunable short-term memory under external light stimuli make the photosynapse suitable for photoelectric reservoirs. The DUV-specific corona discharge, a critical challenge in high-voltage transmission systems, causes exacerbated equipment aging and significant energy losses. By integration of DUV-specific discharge signals and visible environmental information, the system achieves 88.3% accuracy in localizing the corona discharge among six high-risk components in high-voltage systems. Our multispectral RC system demonstrates a pathway toward precise intelligent image recognition in real-world multispectral scenarios.
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