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Main Authors: Huang, Yangyu, Yang, Hao, Li, Chong, Kim, Jongyoo, Wei, Fangyun
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2109.05721
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author Huang, Yangyu
Yang, Hao
Li, Chong
Kim, Jongyoo
Wei, Fangyun
author_facet Huang, Yangyu
Yang, Hao
Li, Chong
Kim, Jongyoo
Wei, Fangyun
contents The recent progress of CNN has dramatically improved face alignment performance. However, few works have paid attention to the error-bias with respect to error distribution of facial landmarks. In this paper, we investigate the error-bias issue in face alignment, where the distributions of landmark errors tend to spread along the tangent line to landmark curves. This error-bias is not trivial since it is closely connected to the ambiguous landmark labeling task. Inspired by this observation, we seek a way to leverage the error-bias property for better convergence of CNN model. To this end, we propose anisotropic direction loss (ADL) and anisotropic attention module (AAM) for coordinate and heatmap regression, respectively. ADL imposes strong binding force in normal direction for each landmark point on facial boundaries. On the other hand, AAM is an attention module which can get anisotropic attention mask focusing on the region of point and its local edge connected by adjacent points, it has a stronger response in tangent than in normal, which means relaxed constraints in the tangent. These two methods work in a complementary manner to learn both facial structures and texture details. Finally, we integrate them into an optimized end-to-end training pipeline named ADNet. Our ADNet achieves state-of-the-art results on 300W, WFLW and COFW datasets, which demonstrates the effectiveness and robustness.
format Preprint
id arxiv_https___arxiv_org_abs_2109_05721
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle ADNet: Leveraging Error-Bias Towards Normal Direction in Face Alignment
Huang, Yangyu
Yang, Hao
Li, Chong
Kim, Jongyoo
Wei, Fangyun
Computer Vision and Pattern Recognition
Artificial Intelligence
Graphics
Information Retrieval
Machine Learning
The recent progress of CNN has dramatically improved face alignment performance. However, few works have paid attention to the error-bias with respect to error distribution of facial landmarks. In this paper, we investigate the error-bias issue in face alignment, where the distributions of landmark errors tend to spread along the tangent line to landmark curves. This error-bias is not trivial since it is closely connected to the ambiguous landmark labeling task. Inspired by this observation, we seek a way to leverage the error-bias property for better convergence of CNN model. To this end, we propose anisotropic direction loss (ADL) and anisotropic attention module (AAM) for coordinate and heatmap regression, respectively. ADL imposes strong binding force in normal direction for each landmark point on facial boundaries. On the other hand, AAM is an attention module which can get anisotropic attention mask focusing on the region of point and its local edge connected by adjacent points, it has a stronger response in tangent than in normal, which means relaxed constraints in the tangent. These two methods work in a complementary manner to learn both facial structures and texture details. Finally, we integrate them into an optimized end-to-end training pipeline named ADNet. Our ADNet achieves state-of-the-art results on 300W, WFLW and COFW datasets, which demonstrates the effectiveness and robustness.
title ADNet: Leveraging Error-Bias Towards Normal Direction in Face Alignment
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Graphics
Information Retrieval
Machine Learning
url https://arxiv.org/abs/2109.05721