Harnessing a silicon carbide nanowire photoelectric synaptic device for novel visual adaptation spiking neural networks†

IF 8 2区 材料科学 Q1 CHEMISTRY, PHYSICAL
Zhe Feng, Shuai Yuan, Jianxun Zou, Zuheng Wu, Xing Li, Wenbin Guo, Su Tan, Haochen Wang, Yang Hao, Hao Ruan, Zhihao Lin, Zuyu Xu, Yunlai Zhu, Guodong Wei and Yuehua Dai
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Abstract

Visual adaptation is essential for optimizing the image quality and sensitivity of artificial vision systems in real-world lighting conditions. However, additional modules, leading to time delays and potentially increasing power consumption, are needed for traditional artificial vision systems to implement visual adaptation. Here, an ITO/PMMA/SiC-NWs/ITO photoelectric synaptic device is developed for compact artificial vision systems with the visual adaption function. The theoretical calculation and experimental results demonstrated that the heating effect, induced by the increment light intensity, leads to the photoelectric synaptic device enabling the visual adaption function. Additionally, a visual adaptation artificial neuron (VAAN) circuit was implemented by incorporating the photoelectric synaptic device into a LIF neuron circuit. The output frequency of this VAAN circuit initially increases and then decreases with gradual light intensification, reflecting the dynamic process of visual adaptation. Furthermore, a visual adaptation spiking neural network (VASNN) was constructed to evaluate the photoelectric synaptic device based visual system for perception tasks. The results indicate that, in the task of traffic sign detection under extreme weather conditions, an accuracy of 97% was achieved (which is approximately 12% higher than that without a visual adaptation function). Our research provides a biologically plausible hardware solution for visual adaptation in neuromorphic computing.

Abstract Image

利用碳化硅纳米线光电突触装置构建新型视觉适应尖峰神经网络
视觉适应对于优化人工视觉系统在真实世界照明条件下的图像质量和灵敏度至关重要。然而,传统的人工视觉系统需要额外的模块来实现视觉自适应,这会导致时间延迟并可能增加功耗。在此,我们为具有视觉自适应功能的紧凑型人工视觉系统开发了一种 ITO/PMMA/SiC-NWs/ITO 光电突触器件。理论计算和实验结果表明,光照强度增加所产生的加热效应可使光电突触器件实现视觉自适应功能。此外,通过在 LIF 神经元电路中加入光电突触装置,实现了视觉自适应漏电集成-发射神经元(VALIF)电路,其输出频率随光照强度的逐渐增强而先增大后减小,反映了视觉自适应的动态过程。此外,还构建了视觉适应尖峰神经网络(VASNN),以评估基于光电突触装置的视觉系统在感知任务中的表现。结果表明,在极端天气条件下的交通标志检测任务中,准确率达到了 97%(比没有视觉适应功能的检测准确率高出约 12%)。我们的研究为神经形态计算中的视觉自适应提供了一种生物学上可行的硬件解决方案。
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来源期刊
Nanoscale Horizons
Nanoscale Horizons Materials Science-General Materials Science
CiteScore
16.30
自引率
1.00%
发文量
141
期刊介绍: Nanoscale Horizons stands out as a premier journal for publishing exceptionally high-quality and innovative nanoscience and nanotechnology. The emphasis lies on original research that introduces a new concept or a novel perspective (a conceptual advance), prioritizing this over reporting technological improvements. Nevertheless, outstanding articles showcasing truly groundbreaking developments, including record-breaking performance, may also find a place in the journal. Published work must be of substantial general interest to our broad and diverse readership across the nanoscience and nanotechnology community.
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