Publications by authors named "Jyun-Jhe Chou"

Though micro-light-emitting diode (micro-LED) displays are regarded as the next-generation emerging display technology, challenges such as defects in LED's light output power and radiation patterns are critical to the commercialization success. Here we propose an electroluminescence mass detection method to examine the light output quality from the on-wafer LED arrays before they are transferred to the display substrate. The mass detection method consists of two stages.

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The majority of digital sensors rely on von Neumann architecture microprocessors to process sampled data. When the sampled data require complex computation for 24×7, the processing element will a consume significant amount of energy and computation resources. Several new sensing algorithms use deep neural network algorithms and consume even more computation resources.

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Synopsis of recent research by authors named "Jyun-Jhe Chou"

  • - Jyun-Jhe Chou's research primarily focuses on advancing display technologies and sensor systems, emphasizing the integration of deep learning and regression analysis for improved performance.
  • - In his recent work on micro-LED displays, Chou developed a novel electroluminescence mass detection method to enhance light output quality assessment before substrate transfer, addressing critical commercialization challenges.
  • - Additionally, Chou explored the limitations of traditional digital sensors operating on von Neumann architecture, proposing CIM-based smart pose detection sensors to reduce energy consumption and improve computational efficiency in continuous operation.