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基于铁电调制的可重构神经形态视觉传感器实现的目标运动检测

Object Motion Detection Enabled by Reconfigurable Neuromorphic Vision Sensor under Ferroelectric Modulation.

作者信息

Dang Zhaoying, Guo Feng, Wang Zhaoqing, Jie Wenjing, Jin Kui, Chai Yang, Hao Jianhua

机构信息

Department of Applied Physics, The Hong Kong Polytechnic University, Hong Kong 999077, China.

The Hong Kong Polytechnic University, Shenzhen Research Institute, Shenzhen, Guangdong 518057, China.

出版信息

ACS Nano. 2024 Oct 8;18(40):27727-27737. doi: 10.1021/acsnano.4c10231. Epub 2024 Sep 26.

Abstract

Increasing the demand for object motion detection (OMD) requires shifts of reducing redundancy, heightened power efficiency, and precise programming capabilities to ensure consistency and accuracy. Drawing inspiration from object motion-sensitive ganglion cells, we propose an OMD vision sensor with a simple device structure of a WSe homojunction modulated by a ferroelectric copolymer. Under optical mode and intermediate ferroelectric modulation, the vision sensor can generate progressive and bidirectional photocurrents with discrete multistates under zero power consumption. This design enables reconfigurable devices to emulate long-term potentiation and depression for synaptic weights updating, which exhibit 82 states (more than 6 bits) with a uniform step of 6 pA. Such OMD devices also demonstrate nonvolatility, reversibility, symmetry, and ultrahigh linearity, achieving a fitted of 0.999 and nonlinearity values of 0.01/-0.01. Thus, a vision sensor could implement motion detection by sensing only dynamic information based on the brightness difference between frames, while eliminating redundant data from static scenes. Additionally, the neural network utilizing a linear result can recognize the essential moving information with a high recognition accuracy of 96.8%. We also present the scalable potential via a uniform 3 × 3 neuromorphic vision sensor array. Our work offers a platform to achieve motion detection based on controllable and energy-efficient ferroelectric programmability.

摘要

对物体运动检测(OMD)需求的增加,要求在减少冗余、提高功率效率和具备精确编程能力方面做出转变,以确保一致性和准确性。从对物体运动敏感的神经节细胞获取灵感,我们提出了一种OMD视觉传感器,其具有由铁电共聚物调制的WSe同质结的简单器件结构。在光学模式和中间铁电调制下,该视觉传感器能够在零功耗情况下产生具有离散多态的渐进式和双向光电流。这种设计使可重构器件能够模拟用于突触权重更新的长时程增强和抑制,其呈现出82种状态(超过6比特),均匀步长为6 pA。此类OMD器件还展现出非易失性、可逆性、对称性和超高线性度,拟合度达到0.999,非线性值为0.01/-0.01。因此,视觉传感器能够通过仅基于帧间亮度差异感测动态信息来实现运动检测,同时消除来自静态场景的冗余数据。此外,利用线性结果的神经网络能够以96.8%的高识别准确率识别基本的运动信息。我们还通过均匀的3×3神经形态视觉传感器阵列展示了其可扩展性潜力。我们的工作提供了一个基于可控且节能的铁电可编程性来实现运动检测的平台。

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