Algorithm of face anti-spoofing based on pseudo-negative features generation.

Front Neurosci

Data and AI Technology Company, China Telecom Corporation Ltd., Beijing, China.

Published: April 2024

AI Article Synopsis

  • Advancements in face anti-spoofing technology face challenges due to evolving attacker methods, diverse presentation modes, and a lack of negative sample data, highlighting the need for better cross-domain strategies.
  • The new method enhances face anti-spoofing systems by generating pseudo-negative features and using KL divergence loss to improve the training dataset, leading to a more effective classifier.
  • Experimental results from four public datasets show that the proposed approach significantly improves performance on both small and large datasets, demonstrating strong generalization across different scenarios.

Article Abstract

Introduction: Despite advancements in face anti-spoofing technology, attackers continue to pose challenges with their evolving deceptive methods. This is primarily due to the increased complexity of their attacks, coupled with a diversity in presentation modes, acquisition devices, and prosthetic materials. Furthermore, the scarcity of negative sample data exacerbates the situation by causing domain shift issues and impeding robust generalization. Hence, there is a pressing need for more effective cross-domain approaches to bolster the model's capability to generalize across different scenarios.

Methods: This method improves the effectiveness of face anti-spoofing systems by analyzing pseudo-negative sample features, expanding the training dataset, and boosting cross-domain generalization. By generating pseudo-negative features with a new algorithm and aligning these features with the use of KL divergence loss, we enrich the negative sample dataset, aiding the training of a more robust feature classifier and broadening the range of attacks that the system can defend against.

Results: Through experiments on four public datasets (MSU-MFSD, OULU-NPU, Replay-Attack, and CASIA-FASD), we assess the model's performance within and across datasets by controlling variables. Our method delivers positive results in multiple experiments, including those conducted on smaller datasets.

Discussion: Through controlled experiments, we demonstrate the effectiveness of our method. Furthermore, our approach consistently yields favorable results in both intra-dataset and cross-dataset evaluations, thereby highlighting its excellent generalization capabilities. The superior performance on small datasets further underscores our method's remarkable ability to handle unseen data beyond the training set.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11047124PMC
http://dx.doi.org/10.3389/fnins.2024.1362286DOI Listing

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