National-Local Joint Engineering Laboratory of New Energy Photovoltaic Devices, Key Laboratory of Brain-Like Neuromorphic Devices and Systems of Hebei Province, College of Electron and Information Engineering, Hebei University, Baoding 071002, P. R. China.
School of Integrated Circuits, Anhui University, Hefei, Anhui 230601, P. R. China.
ACS Nano. 2021 Nov 23;15(11):17319-17326. doi: 10.1021/acsnano.1c04676. Epub 2021 Sep 20.
The visual perception system is the most important system for human learning since it receives over 80% of the learning information from the outside world. With the exponential growth of artificial intelligence technology, there is a pressing need for high-energy and area-efficiency visual perception systems capable of processing efficiently the received natural information. Currently, memristors with their elaborate dynamics, excellent scalability, and information ( visual, pressure, sound, ) perception ability exhibit tremendous potential for the application of visual perception. Here, we propose a fully memristor-based artificial visual perception nervous system (AVPNS) which consists of a quantum-dot-based photoelectric memristor and a nanosheet-based threshold-switching (TS) memristor. We use a photoelectric and a TS memristor to implement the synapse and leaky integrate-and-fire (LIF) neuron functions, respectively. With the proposed AVPNS we successfully demonstrate the biological image perception, integration and fire, as well as the biosensitization process. Furthermore, the self-regulation process of a speed meeting control system in driverless automobiles can be accurately and conceptually emulated by this system. Our work shows that the functions of the biological visual nervous system may be systematically emulated by a memristor-based hardware system, thus expanding the spectrum of memristor applications in artificial intelligence.
视觉感知系统是人类学习最重要的系统,因为它从外界接收超过 80%的学习信息。随着人工智能技术的指数级增长,人们迫切需要高能效和面积效率的视觉感知系统,以便能够有效地处理接收到的自然信息。目前,具有精细动力学、优异可扩展性和信息(视觉、压力、声音等)感知能力的忆阻器在视觉感知应用方面显示出巨大的潜力。在这里,我们提出了一种完全基于忆阻器的人工视觉感知神经系统 (AVPNS),它由基于量子点的光电忆阻器和基于纳米片的阈值开关 (TS) 忆阻器组成。我们使用光电和 TS 忆阻器分别实现突触和漏积分和触发 (LIF) 神经元功能。通过所提出的 AVPNS,我们成功地演示了生物图像感知、整合和触发,以及生物敏化过程。此外,该系统还可以准确而直观地模拟无人驾驶汽车中的速度匹配控制系统的自调节过程。我们的工作表明,生物视觉神经系统的功能可以通过基于忆阻器的硬件系统进行系统地模拟,从而扩展了忆阻器在人工智能中的应用范围。