Abstract
Abstract
Reservoir computing is one of the most promising machine learning architectures and could allow highly efficient, high-speed processing of time-series data. Physical reservoir computing based on various physical phenomena that exhibit complicated dynamics has been widely investigated in recent years. The present work demonstrates vertically aligned graphene/diamond junctions (photomemristors) could be employed for physical reservoir computing involving image recognition of single digits. Exceptional image recognition performance of 92% was obtained due to their complex photoconducting behaviors. This work is expected to assist in the realization of novel visual information processing systems using photomemristors that mimic human brain functions.
Funder
Izumi Science and Technology Foundation
Japan Society for the Promotion of Science
Subject
General Physics and Astronomy,General Engineering
Cited by
1 articles.
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