CVAINov 5, 2022

A Comparative Analysis of the Face Recognition Methods in Video Surveillance Scenarios

arXiv:2211.02952v13 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

This work provides incremental insights for security system developers by comparing existing methods on a new dataset tailored to video surveillance scenarios.

The study benchmarked state-of-the-art face recognition methods using a video surveillance dataset with high age and intra-class variance, identifying the best methods for conditions like non-masked, masked, and glasses-wearing faces.

Facial recognition is fundamental for a wide variety of security systems operating in real-time applications. In video surveillance based face recognition, face images are typically captured over multiple frames in uncontrolled conditions; where head pose, illumination, shadowing, motion blur and focus change over the sequence. We can generalize that the three fundamental operations involved in the facial recognition tasks: face detection, face alignment and face recognition. This study presents comparative benchmark tables for the state-of-art face recognition methods by testing them with same backbone architecture in order to focus only on the face recognition solution instead of network architecture. For this purpose, we constructed a video surveillance dataset of face IDs that has high age variance, intra-class variance (face make-up, beard, etc.) with native surveillance facial imagery data for evaluation. On the other hand, this work discovers the best recognition methods for different conditions like non-masked faces, masked faces, and faces with glasses.

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