神经形态工程学
计算机科学
人工智能
晶体管
卷积神经网络
噪音(视频)
计算机视觉
多光谱图像
弹道
人工神经网络
预处理器
空间光调制器
带宽(计算)
铁电性
面部识别系统
图像传感器
深度学习
机器视觉
宽带
电子工程
背板
视皮层
高动态范围
作者
Yongbiao Zhai,Peijie Chen,Yi Luo,Ziyu Lv,Guanglong Ding,Junjie Yang,Minglin Zheng,Ye Zhou,Yang Chai,Su‐Ting Han
标识
DOI:10.1038/s41467-026-74769-4
摘要
The dynamic vision sensor captures visual information as discrete events, enabling high-speed imaging with reduced data redundancy, but is limited by lack of color sensitivity, a speed-noise trade-off, and inefficient data transfer. Here we show an amphibian-inspired dynamic vision system (ADVS) based on ferroelectric field-effect transistors that emulates the hierarchical functions of amphibian retinas, including spectral perception, spatial preprocessing, and event-driven neural encoding. The ferroelectric transistors exhibit broadband photosensitivity (365–637 nm) and bidirectional photoresponses, enabling multichannel spectral recognition from ultraviolet to visible light. Device arrays further reproduce center–surround receptive-field-like processing, enhancing spatial contrast while suppressing background noise under weak illumination. Owing to the steep switching characteristics (SSmin = 53.8 mV dec−1) of the transistors, the system also supports microsecond-scale event-driven spiking responses. Combined with bioinspired hierarchical preprocessing framework and event-driven convolutional neural network, the ADVS achieves 96.5% accuracy in dynamic facial expression recognition and real-time multi-agent trajectory prediction with <5% error. Overcoming the color blindness, speed-noise trade-offs, and bandwidth bottlenecks of traditional dynamic vision sensors, Zhai et al. report a frog-inspired device combining multispectral perception, spatial preprocessing, and event-driven encoding for low noise visual recognition and real-time multi-objects trajectory prediction.
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