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Low-power edge detection based on ferroelectric field-effect transistor

Author

Listed:
  • Jiajia Chen

    (Xidian University
    Xidian University)

  • Jiacheng Xu

    (Zhejiang Lab)

  • Jiani Gu

    (Zhejiang Lab)

  • Bowen Chen

    (Zhejiang Lab)

  • Hongrui Zhang

    (Xidian University)

  • Haoji Qian

    (Xidian University
    Xidian University)

  • Huan Liu

    (Xidian University)

  • Rongzong Shen

    (Zhejiang Lab)

  • Gaobo Lin

    (Zhejiang Lab)

  • Xiao Yu

    (Xidian University
    Xidian University)

  • Miaomiao Zhang

    (Xidian University
    Xidian University)

  • Yi’an Ding

    (Xidian University)

  • Yan Liu

    (Xidian University
    Xidian University)

  • Jianshi Tang

    (Tsinghua University)

  • Huaqiang Wu

    (Tsinghua University)

  • Chengji Jin

    (Xidian University
    Zhejiang Lab)

  • Genquan Han

    (Xidian University
    Xidian University)

Abstract

Edge detection is one of the most essential research hotspots in computer vision and has a wide variety of applications, such as image segmentation, target detection, and other high-level image processing technologies. However, efficient edge detection is difficult in a resource-constrained environment, especially edge-computing hardware. Here, we report a low-power edge detection hardware system based on HfO2-based ferroelectric field-effect transistor, which is one of the most potential non-volatile memories for energy-efficient computing. Different from the conventional edge detectors requiring sophisticated hardware for the complex operation such as convolution and gradient, the proposed edge detector is analogue-to-digital converter free and loaded into a multi-bit content addressable memory, which only needs one 4 × 4 ferroelectric field-effect transistor NAND array. The experimental results show that the proposed hardware system is able to achieve efficient image edge detection at low power consumption (~10 fJ/per operation), realizing no-accuracy-loss, low-power and analogue-to-digital-converter-free hardware system, providing a feasible solution for edge computing.

Suggested Citation

  • Jiajia Chen & Jiacheng Xu & Jiani Gu & Bowen Chen & Hongrui Zhang & Haoji Qian & Huan Liu & Rongzong Shen & Gaobo Lin & Xiao Yu & Miaomiao Zhang & Yi’an Ding & Yan Liu & Jianshi Tang & Huaqiang Wu & C, 2025. "Low-power edge detection based on ferroelectric field-effect transistor," Nature Communications, Nature, vol. 16(1), pages 1-9, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-024-55224-8
    DOI: 10.1038/s41467-024-55224-8
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