神经形态工程学
计算机科学
图像传感器
人工智能
图像处理
计算机视觉
计算机硬件
图像(数学)
人工神经网络
作者
Changsoon Choi,Juyoung Leem,Minsung Kim,Amir Taqieddin,Chullhee Cho,Kyoung Won Cho,Gil Ju Lee,Hyojin Seung,Hyung Jong Bae,Young Min Song,Taeghwan Hyeon,N. R. Aluru,SungWoo Nam,Dae‐Hyeong Kim
标识
DOI:10.1038/s41467-020-19806-6
摘要
Abstract Conventional imaging and recognition systems require an extensive amount of data storage, pre-processing, and chip-to-chip communications as well as aberration-proof light focusing with multiple lenses for recognizing an object from massive optical inputs. This is because separate chips ( i . e ., flat image sensor array, memory device, and CPU) in conjunction with complicated optics should capture, store, and process massive image information independently. In contrast, human vision employs a highly efficient imaging and recognition process. Here, inspired by the human visual recognition system, we present a novel imaging device for efficient image acquisition and data pre-processing by conferring the neuromorphic data processing function on a curved image sensor array. The curved neuromorphic image sensor array is based on a heterostructure of MoS 2 and poly(1,3,5-trimethyl-1,3,5-trivinyl cyclotrisiloxane). The curved neuromorphic image sensor array features photon-triggered synaptic plasticity owing to its quasi-linear time-dependent photocurrent generation and prolonged photocurrent decay, originated from charge trapping in the MoS 2 -organic vertical stack. The curved neuromorphic image sensor array integrated with a plano-convex lens derives a pre-processed image from a set of noisy optical inputs without redundant data storage, processing, and communications as well as without complex optics. The proposed imaging device can substantially improve efficiency of the image acquisition and recognition process, a step forward to the next generation machine vision.
科研通智能强力驱动
Strongly Powered by AbleSci AI