Dive into the Resolution Augmentations and Metrics in Low Resolution Face Recognition: A Plain yet Effective New Baseline
Xu Ling, Yichen Lu, Wenqi Xu, Weihong Deng, Yingjie Zhang, Xingchen, Cui, Hongzhi Shi, Dongchao Wen

TL;DR
This paper introduces a simple yet effective baseline for low-resolution face recognition by analyzing resolution augmentations and proposing a novel metric loss, significantly improving performance across various datasets.
Contribution
The paper presents a new multi-resolution augmentation strategy and a LogExp-based metric loss to better handle the domain gap between high and low-resolution face images.
Findings
Improved recognition accuracy on LR face datasets.
Reduced degradation on HR face recognition datasets.
Effective handling of diverse resolution samples.
Abstract
Although deep learning has significantly improved Face Recognition (FR), dramatic performance deterioration may occur when processing Low Resolution (LR) faces. To alleviate this, approaches based on unified feature space are proposed with the sacrifice under High Resolution (HR) circumstances. To deal with the huge domain gap between HR and LR domains and achieve the best on both domains, we first took a closer look at the impacts of several resolution augmentations and then analyzed the difficulty of LR samples from the perspective of the model gradient produced by different resolution samples. Besides, we also find that the introduction of some resolutions could help the learning of lower resolutions. Based on these, we divide the LR samples into three difficulties according to the resolution and propose a more effective Multi-Resolution Augmentation. Then, due to the rapidly…
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Taxonomy
TopicsFace recognition and analysis · Domain Adaptation and Few-Shot Learning · Facial Nerve Paralysis Treatment and Research
