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

机译:基于多圈自我关注的亮度降解补偿地址薄膜晶体管 - 有机发光二极管烧伤

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摘要

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 and manufacturing processes because of their complexity. However, given that deep-learning algorithms are typically mounted onto systems on chip (SoC), the complexity of the circuit design is reduced, and the circuit can be reused by only relearning the changed characteristics of the new pixel device. The proposed approach comprises deep-feature generation and multistream self-attention, which decipher the importance of the variables, and the correlation between burn-in-related variables. It also utilizes a deep neural network that identifies the nonlinear relationship between extracted features and luminance degradation. Thereafter, luminance degradation is estimated from burn-in-related variables, and the burn-in phenomenon can be addressed by compensating for luminance degradation. Experiment results revealed that compensation was successfully achieved within an error range of 4.56%, and demonstrated the potential of a new approach that could mitigate the burn-in phenomenon by directly compensating for pixel-level luminance deviation.
机译:我们提出了一种深度学习算法,该算法由于有机发光二极管(OLED)器件的劣化来解决OLED显示器的燃烧现象的劣化而直接补偿亮度劣化。由于它们的复杂性,传统的补偿电路因开发和制造过程的高成本而受到困扰。然而,鉴于深度学习算法通常安装在芯片(SOC)上的系统上,电路设计的复杂性降低,并且电路可以通过仅重新使用新像素设备的改变特性来重复使用。所提出的方法包括深度特征生成和多级自我关注,解码变量的重要性以及与燃烧相关变量之间的相关性。它还利用了深度神经网络,其识别提取的特征和亮度劣化之间的非线性关系。此后,从燃烧相关的变量估计亮度劣化,并且可以通过补偿亮度降解来解决燃烧现象。实验结果表明,在4.56%的误差范围内成功实现了补偿,并通过直接补偿像素级亮度偏差来证明可以减轻燃烧现象的新方法的潜力。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2021(21),9
  • 年度 2021
  • 页码 3182
  • 总页数 14
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:薄膜晶体管(TFT);有机发光二极管(OLED);补偿电路;亮度降解;人工智能;深神经网络;卷积神经网络;

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