TL;DR
This paper introduces a training method to enhance face recognition models' robustness across different image resolutions, addressing a gap in cross-resolution face matching, especially relevant for surveillance and forensic applications.
Contribution
We propose a novel training approach to improve deep feature extraction for cross-resolution face recognition and extensively evaluate it on multiple benchmark datasets.
Findings
Our method outperforms existing models in cross-resolution scenarios.
The approach is effective on low-resolution and low-quality datasets.
Super-resolution preprocessing is less effective than our training method.
Abstract
Convolutional Neural Networks have reached extremely high performances on the Face Recognition task. Largely used datasets, such as VGGFace2, focus on gender, pose and age variations trying to balance them to achieve better results. However, the fact that images have different resolutions is not usually discussed and resize to 256 pixels before cropping is used. While specific datasets for very low resolution faces have been proposed, less attention has been payed on the task of cross-resolution matching. Such scenarios are of particular interest for forensic and surveillance systems in which it usually happens that a low-resolution probe has to be matched with higher-resolution galleries. While it is always possible to either increase the resolution of the probe image or to reduce the size of the gallery images, to the best of our knowledge an extensive experimentation of…
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