神经形态工程学
显著性(神经科学)
计算机科学
人机交互
分布式计算
人工智能
人工神经网络
作者
Tao Zhang,Mingjie Hu,Md. Zesun Ahmed Mia,Hao Zhang,Wei Mao,Katsuyuki Fukutani,Hiroyuki Matsuzaki,Lingzhi Wen,Cong Wang,Hongbo Zhao,Xuegang Chen,Yakun Yuan,Fanqi Meng,Yang Ke,Lili Zhang,Juan Wang,Aiguo Li,Weiwei Zhao,Shiming Lei,Jikun Chen,Pu Yu,Abhronil Sengupta,Haitian Zhang
出处
期刊:Matter
[Elsevier]
日期:2024-04-01
卷期号:7 (5): 1799-1816
被引量:2
标识
DOI:10.1016/j.matt.2024.03.002
摘要
Neuromorphic computing faces long-standing challenges in handling unknown situations beyond the preset boundaries, resulting in catastrophic information loss and model failure. These predicaments arise from the existing brain-inspired hardware's inability to grasp critical information across diverse inputs, often responding passively within unalterable boundaries. Here, we report self-sensitization in perovskite neurons based on an adaptive hydrogen gradient, transcending the conventional fixed response range to autonomously capture unrecognized information. The networks with self-sensitizable neurons work well under unknown environments by reshaping the information reception range and feature salience. It can address the information loss and achieve seamless transition, processing ∼250% more structural information than traditional networks in building detection. Furthermore, the self-sensitizable convolutional network can surpass model boundaries to tackle the data drift accompanying varying inputs, improving accuracy by ∼110% in vehicle classification. The self-sensitizable neuron enables networks to autonomously cope with unforeseen environments, opening new avenues for self-guided cognitive systems.
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