ACE-Net: Fine-Level Face Alignment through Anchors and Contours Estimation
We propose a novel facial Anchors and Contours Estimation framework, ACE-Net, for fine-level face alignment tasks. ACE-Net predicts facial anchors and contours that are richer than traditional facial landmarks and more accurate than facial boundaries. In addition, it does not suffer from the ambiguities and inconsistencies in facial-landmarks definitions. We introduce a weakly supervised loss enabling ACE-Net to learn from existing facial landmarks datasets without the need for extra annotations. Synthetic data is also used during training to bridge the density gap between landmarks annotation and true facial contours. We evaluate ACE-Net on commonly used face alignment datasets 300-W and HELEN, and show that ACE-Net achieves significantly higher fine-level face alignment accuracy than landmarks based models, without compromising its performance at the landmarks level. The proposed ACE-Net framework does not rely on any specific network architecture and thus can be applied on top of existing face alignment models for finer face alignment representation.
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