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Luminance-Degradation Compensation Based on Multistream Self-Attention to Address Thin-Film Transistor-Organic Light Emitting Diode Burn-In 원문보기

Sensors, v.21 no.9, 2021년, pp.3182 -   

Park, Seong-Chel ,  Park, Kwan-Ho ,  Chang, Joon-Hyuk

Abstract AI-Helper 아이콘AI-Helper

We propose a deep-learning algorithm that directly compensates for luminance degradation because of the deterioration of organic light-emitting diode (OLED) devices to address the burn-in phenomenon of OLED displays. Conventional compensation circuits are encumbered by high cost of the development a...

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참고문헌 (34)

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