油藏计算
动作(物理)
计算机科学
纳米技术
材料科学
人工智能
物理
人工神经网络
量子力学
循环神经网络
作者
Hangyuan Cui,Xiao Yu,Yang Yang,Mengjiao Pei,Shuo Ke,Xiao Fang,Lesheng Qiao,Kailu Shi,Haotian Long,Weigao Xu,Pingqiang Cai,Peng Lin,Yi Shi,Qing Wan,Changjin Wan
标识
DOI:10.1038/s41467-025-56899-3
摘要
Current computer vision is data-intensive and faces bottlenecks in shrinking computational costs. Incorporating physics into a bioinspired visual system is promising to offer unprecedented energy efficiency, while the mismatch between physical dynamics and bioinspired algorithms makes the processing of real-world samples rather challenging. Here, we report a bioinspired in-materia analogue photoelectronic reservoir computing for dynamic vision processing. Such system is built based on InGaZnO photoelectronic synaptic transistors as the reservoir and a TaOX-based memristor array as the output layer. A receptive field inspired encoding scheme is implemented, simplifying the feature extraction process. High recognition accuracies (>90%) on four motion recognition datasets are achieved based on such system. Furthermore, falling behaviors recognition is also verified by our system with low energy consumption for processing per action (~45.78 μJ) which outperforms most previous reports on human action processing. Our results are of profound potential for advancing computer vision based on neuromorphic electronics.
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