Yang Qianyi, Zhuang Yezhao, Zhong Zhipeng, Cheng Xin, Li Xiang, Meng Xiangjian, Shi Wu, Huang Hai, Wang Jianlu, Chu Junhao
State Key Laboratory of Photovoltaic Science and Technology, Shanghai Frontiers Science Research Base of Intelligent Optoelectronic and Perception, Institute of Optoelectronic and Department of Materials Science, Fudan University, Shanghai, 200433, China.
Zhangjiang Fudan International Innovation Center, Fudan University, Shanghai, 201210, China.
Adv Mater. 2025 May 15:e2502254. doi: 10.1002/adma.202502254.
Inspired by the human visual system, in-sensor computing has emerged as a promising approach to address growing demands for real-time image processing while overcoming constraints in computational resources. However, existing in-sensor computing optoelectronic devices still face challenges such as complex heterostructures or limited optical modulation for operational efficiency, restricting their practical use. Here, a simple two-terminal optoelectronic device has been fabricated using the 2D material CuInPSe, achieving neuromorphic functionalities through all-optical modulation. The device exhibits a tunable photoresponse across the visible spectrum (400 to 700 nm) and enables bidirectional conductance modulation in response to light stimuli, driven by the interaction between Cu⁺ ions and photogenerated electrons. It shows high linearity with 300 discrete conductance states under red, green, and blue light, enabling color-specific image feature extraction, processing, and recognition across three channels. This approach significantly enhances color image recognition accuracy by 4.6% when integrated with a three-channel convolutional neural network. Additionally, the bidirectional photoresponse allows for efficient noise suppression during color image preprocessing, leading to a 490% improvement in signal-to-noise ratio. These findings highlight the potential of CuInPSe-based architecture for robust performance, paving the way for in-sensor neuromorphic vision systems in artificial intelligence and biomimetic computing.
受人类视觉系统启发,传感器内计算已成为一种很有前景的方法,可满足对实时图像处理日益增长的需求,同时克服计算资源方面的限制。然而,现有的传感器内计算光电器件仍面临诸如复杂异质结构或操作效率有限的光学调制等挑战,限制了它们的实际应用。在此,利用二维材料CuInPSe制造了一种简单的两端光电器件,通过全光调制实现神经形态功能。该器件在可见光谱(400至700纳米)范围内表现出可调光响应,并能响应光刺激实现双向电导调制,这是由Cu⁺离子与光生电子之间的相互作用驱动的。它在红光、绿光和蓝光下具有300个离散电导状态,呈现出高线性度,能够跨三个通道进行特定颜色的图像特征提取、处理和识别。当与三通道卷积神经网络集成时,这种方法可将彩色图像识别准确率显著提高4.6%。此外,双向光响应允许在彩色图像预处理期间有效抑制噪声,使信噪比提高490%。这些发现突出了基于CuInPSe的架构实现强大性能的潜力,为人工智能和仿生计算中的传感器内神经形态视觉系统铺平了道路。