Nature, volume 579, issue 7797, pages 62-66

Ultrafast machine vision with 2D material neural network image sensors

Lukas Mennel 1
Joanna Symonowicz 1
Stefan Wachter 1
Dmitry K Polyushkin 1
Aday J Molina Mendoza 1
THOMAS MUELLER 1
Publication typeJournal Article
Publication date2020-03-04
Journal: Nature
scimago Q1
SJR18.509
CiteScore90.0
Impact factor50.5
ISSN00280836, 14764687
Multidisciplinary
Abstract
Machine vision technology has taken huge leaps in recent years, and is now becoming an integral part of various intelligent systems, including autonomous vehicles and robotics. Usually, visual information is captured by a frame-based camera, converted into a digital format and processed afterwards using a machine-learning algorithm such as an artificial neural network (ANN)1. The large amount of (mostly redundant) data passed through the entire signal chain, however, results in low frame rates and high power consumption. Various visual data preprocessing techniques have thus been developed2–7 to increase the efficiency of the subsequent signal processing in an ANN. Here we demonstrate that an image sensor can itself constitute an ANN that can simultaneously sense and process optical images without latency. Our device is based on a reconfigurable two-dimensional (2D) semiconductor8,9 photodiode10–12 array, and the synaptic weights of the network are stored in a continuously tunable photoresponsivity matrix. We demonstrate both supervised and unsupervised learning and train the sensor to classify and encode images that are optically projected onto the chip with a throughput of 20 million bins per second. A two-dimensional semiconductor photodiode array senses and processes optical images simultaneously without latency, and is trained to classify and encode images with high throughput, acting as an artificial neural network.
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