TL;DR
This paper presents a domain-specific face synthesis algorithm that enhances video face recognition accuracy from a single sample by generating synthetic faces tailored to operational domain variations.
Contribution
The proposed DSFS algorithm leverages OD data to generate synthetic faces, improving recognition robustness with a compact, domain-adapted face set.
Findings
Improved recognition accuracy over state-of-the-art methods.
Synthetic faces effectively model OD variations.
Moderate computational complexity increase.
Abstract
The performance of still-to-video FR systems can decline significantly because faces captured in unconstrained operational domain (OD) over multiple video cameras have a different underlying data distribution compared to faces captured under controlled conditions in the enrollment domain (ED) with a still camera. This is particularly true when individuals are enrolled to the system using a single reference still. To improve the robustness of these systems, it is possible to augment the reference set by generating synthetic faces based on the original still. However, without knowledge of the OD, many synthetic images must be generated to account for all possible capture conditions. FR systems may, therefore, require complex implementations and yield lower accuracy when training on many less relevant images. This paper introduces an algorithm for domain-specific face synthesis (DSFS) that…
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