Neuro-inspired optical sensor array for high-accuracy static image recognition and dynamic trace extraction

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Abstract

Neuro-inspired vision systems hold great promise to address the growing demands of mass data processing for edge computing, a distributed framework that brings computation and data storage closer to the sources of data. In addition to the capability of static image sensing and processing, the hardware implementation of a neuro-inspired vision system also requires the fulfilment of detecting and recognizing moving targets. Here, we demonstrated a neuro-inspired optical sensor based on two-dimensional NbS2/MoS2 hybrid films, which featured remarkable photo-induced conductance plasticity and low electrical energy consumption. A neuro-inspired optical sensor array with 10 × 10 NbS2/MoS2 phototransistors enabled highly integrated functions of sensing, memory, and contrast enhancement capabilities for static images, which benefits convolutional neural network (CNN) with a high image recognition accuracy. More importantly, in-sensor trajectory registration of moving light spots was experimentally implemented such that the post-processing could yield a high restoration accuracy. Our neuro-inspired optical sensor array could provide a fascinating platform for the implementation of high-performance artificial vision systems.

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Huang, P. Y., Jiang, B. Y., Chen, H. J., Xu, J. Y., Wang, K., Zhu, C. Y., … Xu, C. Y. (2023). Neuro-inspired optical sensor array for high-accuracy static image recognition and dynamic trace extraction. Nature Communications, 14(1). https://doi.org/10.1038/s41467-023-42488-9

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