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Artificial optic-neural synapse for colored and color-mixed pattern recognition

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TLDR
An optic-neural synaptic device is demonstrating a close to linear weight update trajectory while providing a large number of stable conduction states with less than 1% variation per state and facilitates the demonstration of accurate and energy efficient colored and color-mixed pattern recognition.
Abstract
The priority of synaptic device researches has been given to prove the device potential for the emulation of synaptic dynamics and not to functionalize further synaptic devices for more complex learning. Here, we demonstrate an optic-neural synaptic device by implementing synaptic and optical-sensing functions together on h-BN/WSe2 heterostructure. This device mimics the colored and color-mixed pattern recognition capabilities of the human vision system when arranged in an optic-neural network. Our synaptic device demonstrates a close to linear weight update trajectory while providing a large number of stable conduction states with less than 1% variation per state. The device operates with low voltage spikes of 0.3 V and consumes only 66 fJ per spike. This consequently facilitates the demonstration of accurate and energy efficient colored and color-mixed pattern recognition. The work will be an important step toward neural networks that comprise neural sensing and training functions for more complex pattern recognition. Artificial neural networks can emulate the human vision because of their spike-based operation by employing memristors as synapses. Here, Seo et al. integrate synaptic and optical sensing functions in a single heterostructure, which enables accurate and energy-efficient recognition of colored patterns.

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Two-dimensional materials for next-generation computing technologies.

TL;DR: The opportunities, progress and challenges of integrating two-dimensional materials with in-memory computing and transistor-based computing technologies, from the perspective of matrix and logic computing, are discussed.
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A comprehensive review on emerging artificial neuromorphic devices

TL;DR: A comprehensive review on emerging artificial neuromorphic devices and their applications is offered, showing that anion/cation migration-based memristive devices, phase change, and spintronic synapses have been quite mature and possess excellent stability as a memory device, yet they still suffer from challenges in weight updating linearity and symmetry.
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Near-sensor and in-sensor computing

TL;DR: In this paper, the authors examine the concept of near-senor and in-sensor computing in which computation tasks are moved partly to the sensory terminals, exploring the challenges facing the field and providing possible solutions for the hardware implementation of integrated sensing and processing units using advanced manufacturing technologies.
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Flexible Neuromorphic Electronics for Computing, Soft Robotics, and Neuroprosthetics

TL;DR: The progress of flexible neuromorphic electronics is addressed, from basic backgrounds including synaptic characteristics, device structures, and mechanisms of artificial synapses and nerves, to applications for computing, soft robotics, and neuroprosthetics, and future research directions toward wearable artificial neuromorphic systems are suggested.
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Retina-Inspired Carbon Nitride-Based Photonic Synapses for Selective Detection of UV Light.

TL;DR: Organic photonic synapses that selectively detect UV rays and process various optical stimuli are presented and in situ modulation of exposure to UV light is demonstrated by integrating the devices with UV transmittance modulators.
References
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Van der Waals heterostructures

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TL;DR: This book is a detailed, logically-developed treatment that covers the theory and uses of collective computational networks, including associative memory, feed forward networks, and unsupervised learning.
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