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Minho Choi

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NeurIPS Conference 2025 Conference Paper

Neural Tangent Knowledge Distillation for Optical Convolutional Networks

  • Jinlin Xiang
  • Minho Choi
  • Yubo Zhang
  • Zhihao Zhou
  • Arka Majumdar
  • Eli Shlizerman

Hybrid Optical Neural Networks (ONNs, typically consisting of an optical frontend and a digital backend) offer an energy-efficient alternative to fully digital deep networks for real-time, power-constrained systems. However, their adoption is limited by two main challenges: the accuracy gap compared to large-scale networks during training, and discrepancies between simulated and fabricated systems that further degrade accuracy. While previous work has proposed end-to-end optimizations for specific datasets (e. g. , MNIST) and optical systems, these approaches typically lack generalization across tasks and hardware designs. To address these limitations, we propose a task-agnostic and hardware-agnostic pipeline that supports image classification and segmentation across diverse optical systems. To assist optical system design before training, we design the metasurface layout based on fabrication constraints. For training, we introduce Neural Tangent Knowledge Distillation (NTKD), which aligns optical models with electronic teacher networks, thereby narrowing the accuracy gap. After fabrication, NTKD also guides fine-tuning of the digital backend to compensate for implementation errors. Experiments on multiple datasets (e. g. , MNIST, CIFAR, Carvana Masking) and hardware configurations show that our pipeline consistently improves ONN performance and enables practical deployment in both pre-fabrication simulations and physical implementations.

AIIM Journal 2020 Journal Article

Fuzzy support vector machine-based personalizing method to address the inter-subject variance problem of physiological signals in a driver monitoring system

  • Minho Choi
  • Minseok Seo
  • Jun Seong Lee
  • Sang Woo Kim

Physiological signals can be utilized to monitor conditions of a driver, but the inter-subject variance of physiological signals can degrade the classification accuracy of the monitoring system. Personalization of the system using the data of a tested subject, called local data, can be a solution, but the acquisition of sufficient local data may not be possible in real situations. Therefore, this paper proposes an effective personalizing method using small-sized local data. The proposed method utilizes a fuzzy support vector machine to allocate higher weight to the local data than to others, and a fuzzy membership is assigned to the training data by analyzing the importance of each datum. Three classification problems for a physiological signal-based driver monitoring system are introduced and utilized to validate the proposed method. The classification accuracy is compared with that of other personalizing methods, and the results show that the proposed method achieves a better accuracy on average, which is 3. 46% higher than that of the simple approach using a basic support vector machine, thereby proving its effectiveness. The proposed method can train a personalized classifier with improved accuracy for a tested subject. The advantages of the proposed method can be utilized to develop a practical driver monitoring system.