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In situ training of an in-sensor artificial neural network based on ferroelectric photosensors

Author

Listed:
  • Haipeng Lin

    (South China Normal University)

  • Jiali Ou

    (South China Normal University)

  • Zhen Fan

    (South China Normal University)

  • Xiaobing Yan

    (Hebei University)

  • Wenjie Hu

    (South China Normal University)

  • Boyuan Cui

    (South China Normal University)

  • Jikang Xu

    (Hebei University)

  • Wenjie Li

    (South China Normal University)

  • Zhiwei Chen

    (South China Normal University)

  • Biao Yang

    (Hebei University)

  • Kun Liu

    (South China Normal University)

  • Linyuan Mo

    (South China Normal University)

  • Meixia Li

    (South China Normal University)

  • Xubing Lu

    (South China Normal University)

  • Guofu Zhou

    (South China Normal University)

  • Xingsen Gao

    (South China Normal University)

  • Jun-Ming Liu

    (South China Normal University
    Nanjing University)

Abstract

In-sensor computing has emerged as an ultrafast and low-power technique for next-generation machine vision. However, in situ training of in-sensor computing systems remains challenging due to the demands for both high-performance devices and efficient programming schemes. Here, we experimentally demonstrate the in situ training of an in-sensor artificial neural network (ANN) based on ferroelectric photosensors (FE-PSs). Our FE-PS exhibits self-powered, fast ( 4 bits) photoresponses, as well as long retention (50 days), high endurance (109), high write speed (100 ns), and small cycle-to-cycle and device-to-device variations (~0.66% and ~2.72%, respectively), all of which are desirable for the in situ training. Additionally, a bi-directional closed-loop programming scheme is developed, achieving a precise and efficient weight update for the FE-PS. Using this programming scheme, an in-sensor ANN based on the FE-PSs is trained in situ to recognize traffic signs for commanding a prototype autonomous vehicle. Moreover, this in-sensor ANN operates 50 times faster than a von Neumann machine vision system. This study paves the way for the development of in-sensor computing systems with in situ training capability, which may find applications in new data-streaming machine vision tasks.

Suggested Citation

  • Haipeng Lin & Jiali Ou & Zhen Fan & Xiaobing Yan & Wenjie Hu & Boyuan Cui & Jikang Xu & Wenjie Li & Zhiwei Chen & Biao Yang & Kun Liu & Linyuan Mo & Meixia Li & Xubing Lu & Guofu Zhou & Xingsen Gao & , 2025. "In situ training of an in-sensor artificial neural network based on ferroelectric photosensors," Nature Communications, Nature, vol. 16(1), pages 1-12, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-024-55508-z
    DOI: 10.1038/s41467-024-55508-z
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