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Integration of synaptic phototransistors and quantum dot light-emitting diodes for visualization and recognition of UV patterns

Hyojin Seung, Changsoon Choi, Dong Chan Kim, Ji Su Kim, Jeong Hyun Kim, Junhee Kim, Soo Ik Park, Jung Ah Lim, Jiwoong Yang, Moon Kee Choi, Taeghwan Hyeon, Dae‐Hyeong Kim

2022Science Advances87 citationsDOIOpen Access PDF

Abstract

Synaptic photodetectors exhibit photon-triggered synaptic plasticity, which thus can improve the image recognition rate by enhancing the image contrast. However, still, the visualization and recognition of invisible ultraviolet (UV) patterns are challenging, owing to intense background noise. Here, inspired by all-or-none potentiation of synapse, we develop an integrated device of synaptic phototransistors (SPTrs) and quantum dot light-emitting diodes (QLEDs), facilitating noise reduction and visualization of UV patterns through on-device preprocessing. The SPTrs convert noisy UV inputs into a weighted photocurrent, which is applied to the QLEDs as a voltage input through an external current-voltage-converting circuit. The threshold switching characteristics of the QLEDs result in amplified current and visible illumination by the suprathreshold input voltage or nearly zero current and no visible illumination by the input voltage below the threshold. The preprocessing of image data with the SPTr-QLED can amplify the image contrast, which is helpful for high-accuracy image recognition.

Topics & Concepts

OptoelectronicsComputer scienceLight-emitting diodeQuantum dotPhotodiodeVisualizationDiodePreprocessorPhotodetectorPhotocurrentUltravioletNoise (video)Materials scienceVoltageArtificial intelligenceComputer visionPhysicsImage (mathematics)Quantum mechanicsAdvanced Memory and Neural ComputingCCD and CMOS Imaging SensorsTransition Metal Oxide Nanomaterials
Integration of synaptic phototransistors and quantum dot light-emitting diodes for visualization and recognition of UV patterns | Litcius