Scientific Reports (Feb 2022)

Mnemonic-opto-synaptic transistor for in-sensor vision system

  • Joon-Kyu Han,
  • Young-Woo Chung,
  • Jaeho Sim,
  • Ji-Man Yu,
  • Geon-Beom Lee,
  • Sang-Hyeon Kim,
  • Yang-Kyu Choi

DOI
https://doi.org/10.1038/s41598-022-05944-y
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 8

Abstract

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Abstract A mnemonic-opto-synaptic transistor (MOST) that has triple functions is demonstrated for an in-sensor vision system. It memorizes a photoresponsivity that corresponds to a synaptic weight as a memory cell, senses light as a photodetector, and performs weight updates as a synapse for machine vision with an artificial neural network (ANN). Herein the memory function added to a previous photodetecting device combined with a photodetector and a synapse provides a technical breakthrough for realizing in-sensor processing that is able to perform image sensing and signal processing in a sensor. A charge trap layer (CTL) was intercalated to gate dielectrics of a vertical pillar-shaped transistor for the memory function. Weight memorized in the CTL makes photoresponsivity tunable for real-time multiplication of the image with a memorized photoresponsivity matrix. Therefore, these multi-faceted features can allow in-sensor processing without external memory for the in-sensor vision system. In particular, the in-sensor vision system can enhance speed and energy efficiency compared to a conventional vision system due to the simultaneous preprocessing of massive data at sensor nodes prior to ANN nodes. Recognition of a simple pattern was demonstrated with full sets of the fabricated MOSTs. Furthermore, recognition of complex hand-written digits in the MNIST database was also demonstrated with software simulations.