Efficient Face Recognition Using Embedding-Based Distillation
DOI:
https://doi.org/10.53907/enpesj.v5i2.335Keywords:
Face Recognition, Knowledge Distillation, Mobile devices, Efficient Deep learningAbstract
Knowledge distillation (KD) facilitates the compression of large, high-performing neural networks into efficient
student models, enabling deployment on resource-limited devices like mobile phones and IoT systems. This paper
introduces a KD methodology, which involves training a student to capture a teacher’s soft labels, intermediate feature
representations, and ground truth labels, ensuring both compactness and accuracy. Applied to face recognition, our hybrid
KD framework trains a MobileFaceNet student under an InceptionResNetV1 teacher, achieving 90.40% accuracy and a
96.25% AUC, outperforming lightweight models while remaining suitable for edge devices. These results highlight the
potential of KD to enable robust, scalable face recognition solutions for real-world, resource-constrained environments.
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