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用于图像加密与修复的全调制亚阿托焦耳操作光电突触

Comprehensively Modulated Sub-Attojoule Operated Optoelectronic Synapses for Image Encryption and Inpainting.

作者信息

Yang Hui, Zhang Yifei, Hu Fangzhen, Li Ziqing, Wu Dongping, Chen Xi

机构信息

School of Artificial Intelligence Science and Technology, University of Shanghai for Science and Technology, Shanghai 200093, China.

Key Laboratory of ASIC and System, Fudan University, Shanghai 200433, China.

出版信息

ACS Appl Mater Interfaces. 2024 Oct 23;16(42):57804-57815. doi: 10.1021/acsami.4c08070. Epub 2024 Aug 29.

Abstract

High-performance optoelectronic synaptic transistors play a crucial role in developing and emulating artificial visual systems. However, due to the predominant use of single-structure material modulation in optimizing optoelectronic synapses, their energy consumption significantly trails behind that of electronic synapses by several orders of magnitude. Herein, polymer dielectric layers and optimized contact strategies are adopted to realize the ultralow consumption optoelectronic synapses. Integration of polyimide dielectric significantly enhances photogenerated charge carrier dissociation, leading to substantial improvements in photoresponsivity (1.5 × 10 A·W), photodetectivity (6.9 × 10 Jones), and external quantum efficiency (4.0 × 10%). Additionally, optimized contact properties augment their appeal for ultralow energy consumption in optoelectronic synapse applications. Excitatory postsynaptic current is triggered at an incredibly low voltage of 5 μV and boosts an impressively low energy consumption of 0.05 aJ, ranking among the best-reported results in this field. Next, we demonstrate an integrated system combining the MoS optoelectronic synapses with a recurrent neural network enabling 100% accurate recognition of optical signals, particularly in scenarios with aJ-leveled energy consumption. Finally, an image encryption system has been developed, in which images are encrypted by photoelectronic conversion of synapse arrays with random voltage settings and decrypted according to the recurrent neural network-based accuracy. More importantly, once partially damaged images are encrypted, through the decryption image inpainting can be realized due to the high accuracy. The proposed innovative approach holds promise for advancing artificial intelligence applications with improved energy efficiency, information security, and computational capabilities.

摘要

高性能光电突触晶体管在人工视觉系统的开发和模拟中起着至关重要的作用。然而,由于在优化光电突触时主要使用单结构材料调制,其能量消耗比电子突触落后几个数量级。在此,采用聚合物介电层和优化的接触策略来实现超低功耗的光电突触。聚酰亚胺电介质的集成显著增强了光生电荷载流子的解离,导致光响应性(1.5×10 A·W)、光探测率(6.9×10琼斯)和外量子效率(4.0×10%)有了大幅提高。此外,优化的接触特性增强了它们在光电突触应用中对超低能耗的吸引力。兴奋性突触后电流在低至5 μV的电压下被触发,并且具有令人印象深刻的低能耗0.05 aJ,跻身该领域报道的最佳结果之列。接下来,我们展示了一个将MoS光电突触与循环神经网络相结合的集成系统,该系统能够100%准确识别光信号,特别是在具有aJ级能耗的场景中。最后,开发了一种图像加密系统,其中图像通过具有随机电压设置的突触阵列的光电转换进行加密,并根据基于循环神经网络的准确性进行解密。更重要的是,一旦部分受损图像被加密,由于高精度,可以通过解密实现图像修复。所提出的创新方法有望在提高能源效率、信息安全和计算能力的情况下推动人工智能应用的发展。

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