Deep Learning Based Single Sample Per Person Face Recognition: A Survey
Fan Liu, Delong Chen, Fei Wang, Zewen Li, Feng Xu

TL;DR
This survey reviews deep learning methods for single sample face recognition, categorizing approaches into virtual sample generation and generic learning, and discusses datasets, challenges, and future directions in the field.
Contribution
It provides a comprehensive classification and analysis of deep learning-based single sample face recognition methods, highlighting recent advances and future research directions.
Findings
Virtual sample methods improve training with generated images or features.
Generic learning methods enhance recognition by using multi-sample sets and improved models.
Deep learning methods outperform traditional approaches in single sample face recognition.
Abstract
Face recognition has long been an active research area in the field of artificial intelligence, particularly since the rise of deep learning in recent years. In some practical situations, each identity has only a single sample available for training. Face recognition under this situation is referred to as single sample face recognition and poses significant challenges to the effective training of deep models. Therefore, in recent years, researchers have attempted to unleash more potential of deep learning and improve the model recognition performance in the single sample situation. While several comprehensive surveys have been conducted on traditional single sample face recognition approaches, emerging deep learning based methods are rarely involved in these reviews. Accordingly, we focus on the deep learning-based methods in this paper, classifying them into virtual sample methods and…
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