A novel classification-selection approach for the self updating of template-based face recognition systems
Giulia Orr\`u, Gian Luca Marcialis, Fabio Roli

TL;DR
This paper introduces a novel classification-selection self-update algorithm for template-based face recognition that maintains system performance over time by selecting templates around the dominant feature mode, reducing manual updates and computational load.
Contribution
The paper proposes a new template selection method based on feature mode analysis, applicable to both handcrafted and deep learning features, improving self-update efficiency in face recognition systems.
Findings
The approach outperforms manual updating in experiments.
It reduces computational complexity and storage needs.
Effective with both handcrafted and deep learning features.
Abstract
The boosting on the need of security notably increased the amount of possible facial recognition applications, especially due to the success of the Internet of Things (IoT) paradigm. However, although handcrafted and deep learning-inspired facial features reached a significant level of compactness and expressive power, the facial recognition performance still suffers from intra-class variations such as ageing, facial expressions, lighting changes, and pose. These variations cannot be captured in a single acquisition and require multiple acquisitions of long duration, which are expensive and need a high level of collaboration from the users. Among others, self-update algorithms have been proposed in order to mitigate these problems. Self-updating aims to add novel templates to the users' gallery among the inputs submitted during system operations. Consequently, computational complexity…
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