Multi-Layer 5D Optical Data Storage: Mathematical Modeling and Deep Learning-Based Reconstruction of Birefringent Parameters

  • Ye Zhang
  • , Qiao Zhu
  • , Rongkuan Zhou
  • , Tatiana Lysak
  • , Chao Wang*
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Abstract: Five-dimensional (5D) optical data storage has emerged as a promising technology for ultra-high-density, long-term data archiving. However, its practical realization is hindered by noise and interference during data readout. In this work, we develop a high-precision mathematical model for multi-layer 5D optical storage, grounded in the Jones matrix framework, to accurately capture polarization transformations induced by stacked birefringent nanostructures. Building on this model, we propose a 20-frame FiLM-conditioned U-Net algorithm to reconstruct birefringence parameters—specifically, slow-axis orientation and retardance magnitude—directly from measured intensity patterns. Trained on both ideal and noisy datasets, the network demonstrates robust reconstruction performance under challenging measurement conditions. Compared with conventional frame-based retrieval approaches, our method achieves over an order-of-magnitude improvement in reconstruction accuracy. The proposed model and algorithm can be readily integrated into existing 5D optical readout systems, offering both a solid theoretical foundation and practical tools for precise data recovery.

Original languageEnglish
Pages (from-to)120-135
Number of pages16
JournalComputational Mathematics and Mathematical Physics
Volume66
Issue number1
DOIs
Publication statusPublished - Jan 2026
Externally publishedYes

Keywords

  • 5D optical data storage
  • birefringence parameter reconstruction
  • FiLM-conditioned U-Net
  • Jones matrix modeling
  • multilayer birefringent nanogratings

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