A Survey on Face Recognition Systems
This is an incremental survey summarizing existing methods for researchers in computer vision.
The paper surveys impactful face recognition systems, providing an overview of general systems, network architectures, training losses, and evaluation databases, but does not present new results or concrete numbers.
Face Recognition has proven to be one of the most successful technology and has impacted heterogeneous domains. Deep learning has proven to be the most successful at computer vision tasks because of its convolution-based architecture. Since the advent of deep learning, face recognition technology has had a substantial increase in its accuracy. In this paper, some of the most impactful face recognition systems were surveyed. Firstly, the paper gives an overview of a general face recognition system. Secondly, the survey covers various network architectures and training losses that have had a substantial impact. Finally, the paper talks about various databases that are used to evaluate the capabilities of a face recognition system.