Face Shape-Guided Deep Feature Alignment for Face Recognition Robust to Face Misalignment
Hyung-Il Kim, Kimin Yun, Yong Man Ro

TL;DR
This paper introduces a face shape-guided deep feature alignment framework that enhances face recognition robustness against face misalignment by using face shape priors and alignment processes during training.
Contribution
It proposes a novel deep learning approach that incorporates face shape priors and alignment techniques to improve face recognition performance under misaligned conditions.
Findings
Significantly improves face recognition accuracy with misaligned faces.
Effective in real-world scenarios with face misalignment.
Does not require face shape estimation during testing.
Abstract
For the past decades, face recognition (FR) has been actively studied in computer vision and pattern recognition society. Recently, due to the advances in deep learning, the FR technology shows high performance for most of the benchmark datasets. However, when the FR algorithm is applied to a real-world scenario, the performance has been known to be still unsatisfactory. This is mainly attributed to the mismatch between training and testing sets. Among such mismatches, face misalignment between training and testing faces is one of the factors that hinder successful FR. To address this limitation, we propose a face shape-guided deep feature alignment framework for FR robust to the face misalignment. Based on a face shape prior (e.g., face keypoints), we train the proposed deep network by introducing alignment processes, i.e., pixel and feature alignments, between well-aligned and…
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Taxonomy
TopicsFace recognition and analysis · Face and Expression Recognition · Biometric Identification and Security
