CVSep 18, 2023

Distributional Estimation of Data Uncertainty for Surveillance Face Anti-spoofing

arXiv:2309.09485v11 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses security vulnerabilities in face recognition systems for surveillance applications, representing an incremental improvement.

The paper tackles the challenge of Face Anti-spoofing (FAS) in low-quality surveillance scenarios by proposing Distributional Estimation (DisE) to model data uncertainty, achieving comparable performance on ACER and AUC metrics on the SuHiFiMask dataset.

Face recognition systems have become increasingly vulnerable to security threats in recent years, prompting the use of Face Anti-spoofing (FAS) to protect against various types of attacks, such as phone unlocking, face payment, and self-service security inspection. While FAS has demonstrated its effectiveness in traditional settings, securing it in long-distance surveillance scenarios presents a significant challenge. These scenarios often feature low-quality face images, necessitating the modeling of data uncertainty to improve stability under extreme conditions. To address this issue, this work proposes Distributional Estimation (DisE), a method that converts traditional FAS point estimation to distributional estimation by modeling data uncertainty during training, including feature (mean) and uncertainty (variance). By adjusting the learning strength of clean and noisy samples for stability and accuracy, the learned uncertainty enhances DisE's performance. The method is evaluated on SuHiFiMask [1], a large-scale and challenging FAS dataset in surveillance scenarios. Results demonstrate that DisE achieves comparable performance on both ACER and AUC metrics.

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