Artificial visual neuron based on threshold switching memristors

Juan Wen, Zhen-Ye Zhu, Xin Guo
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引用次数: 1

Abstract

The human visual system encodes optical information perceived by photoreceptors in the retina into neural spikes and then processes them by the visual cortex, with high efficiency and low energy consumption. Inspired by this information processing mode, an universal artificial neuron constructed with a resistor (R s) and a threshold switching memristor can realize rate coding by modulating pulse parameters and the resistance of R s. Owing to the absence of an external parallel capacitor, the artificial neuron has minimized chip area. In addition, an artificial visual neuron is proposed by replacing R s in the artificial neuron with a photo-resistor. The oscillation frequency of the artificial visual neuron depends on the distance between the photo-resistor and light, which is fundamental to acquiring depth perception for precise recognition and learning. A visual perception system with the artificial visual neuron can accurately and conceptually emulate the self-regulation process of the speed control system in a driverless automobile. Therefore, the artificial visual neuron can process efficiently sensory data, reduce or eliminate data transfer and conversion at sensor/processor interfaces, and expand its application in the field of artificial intelligence.
基于阈值开关记忆电阻器的人工视觉神经元
人类的视觉系统将视网膜上的光感受器感知到的光信息编码成神经尖峰,再由视觉皮层处理,效率高,能耗低。受这种信息处理方式的启发,采用电阻器(R s)和阈值开关忆阻器构成的通用人工神经元,通过调制脉冲参数和R s的电阻来实现速率编码。由于无需外部并联电容,该人工神经元的芯片面积最小。此外,还提出了一种用光电阻器代替人工神经元中的R s的人工视觉神经元。人工视觉神经元的振荡频率取决于光电阻器与光之间的距离,这是获得深度感知以进行精确识别和学习的基础。采用人工视觉神经元的视觉感知系统可以准确、概念地模拟无人驾驶汽车速度控制系统的自我调节过程。因此,人工视觉神经元可以高效地处理感官数据,减少或消除传感器/处理器接口的数据传输和转换,扩大其在人工智能领域的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.90
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0.00%
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