TY - JOUR
T1 - MetaRGBX-Net:RGB Sensitivity and Cross-Talk Prediction in CMOS Image Sensor
AU - Lee, Janghyeon
AU - Kim, Byounggyu
AU - Lee, Yongkeun
N1 - Publisher Copyright:
© 1980-2012 IEEE.
PY - 2025
Y1 - 2025
N2 - The CMOS image sensor (CIS) underpins optical applications, enabling high-resolution imaging across the visible and near-infrared spectra. Advances in nanofabrication have enhanced pixel density, improving resolution, but as pixel dimensions approach the diffraction limit, maintaining optical sensitivity without performance trade-offs remains challenging. Nanophotonic solutions, like nanophotonic-based color routers, address these limitations. This study builds on MetaRGB-Net, a machine learning framework achieving 98% prediction accuracy in optimizing RGB sensitivity. We introduce MetaRGBX-Net, which employs separate neural networks to optimize both RGB sensitivity and cross-talk, achieving 95% and 98% prediction accuracy, respectively. This enables precise optimization of critical parameters and serves as a foundation for Bayesian optimization to refine metasurface designs, ensuring efficient light routing through RGB channels while minimizing cross-talk. MetaRGBX-Net streamlines metasurface design and provides a scalable foundation for next-generation CIS applications in IoT, biomedical imaging, and environmental monitoring.
AB - The CMOS image sensor (CIS) underpins optical applications, enabling high-resolution imaging across the visible and near-infrared spectra. Advances in nanofabrication have enhanced pixel density, improving resolution, but as pixel dimensions approach the diffraction limit, maintaining optical sensitivity without performance trade-offs remains challenging. Nanophotonic solutions, like nanophotonic-based color routers, address these limitations. This study builds on MetaRGB-Net, a machine learning framework achieving 98% prediction accuracy in optimizing RGB sensitivity. We introduce MetaRGBX-Net, which employs separate neural networks to optimize both RGB sensitivity and cross-talk, achieving 95% and 98% prediction accuracy, respectively. This enables precise optimization of critical parameters and serves as a foundation for Bayesian optimization to refine metasurface designs, ensuring efficient light routing through RGB channels while minimizing cross-talk. MetaRGBX-Net streamlines metasurface design and provides a scalable foundation for next-generation CIS applications in IoT, biomedical imaging, and environmental monitoring.
KW - CIS
KW - Cross-Talk
KW - Meta-atoms
KW - Metasurface
KW - Neural Networks
KW - Sensitivity
KW - Sensor
UR - http://www.scopus.com/inward/record.url?scp=105003171509&partnerID=8YFLogxK
U2 - 10.1109/LED.2025.3562529
DO - 10.1109/LED.2025.3562529
M3 - Article
AN - SCOPUS:105003171509
SN - 0741-3106
JO - IEEE Electron Device Letters
JF - IEEE Electron Device Letters
ER -