1. Introduction
Recent advancements in face recognition systems have been driven by deep neural networks trained on large-scale datasets, leading to remarkable progress in accuracy [16, 27]. However, the state-of-the-art face recognition networks are often computationally heavy and the deployment of these networks on edge devices poses practical challenges. Nevertheless, it is possible to develop efficient networks from these large models that achieve comparable accuracy with significantly reduced computational load, making them suitable for edge device deployment.