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Papers/FreeEnricher: Enriching Face Landmarks without Additional ...

FreeEnricher: Enriching Face Landmarks without Additional Cost

Yangyu Huang, Xi Chen, Jongyoo Kim, Hao Yang, Chong Li, Jiaolong Yang, Dong Chen

2022-12-19Face Alignment
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Abstract

Recent years have witnessed significant growth of face alignment. Though dense facial landmark is highly demanded in various scenarios, e.g., cosmetic medicine and facial beautification, most works only consider sparse face alignment. To address this problem, we present a framework that can enrich landmark density by existing sparse landmark datasets, e.g., 300W with 68 points and WFLW with 98 points. Firstly, we observe that the local patches along each semantic contour are highly similar in appearance. Then, we propose a weakly-supervised idea of learning the refinement ability on original sparse landmarks and adapting this ability to enriched dense landmarks. Meanwhile, several operators are devised and organized together to implement the idea. Finally, the trained model is applied as a plug-and-play module to the existing face alignment networks. To evaluate our method, we manually label the dense landmarks on 300W testset. Our method yields state-of-the-art accuracy not only in newly-constructed dense 300W testset but also in the original sparse 300W and WFLW testsets without additional cost.

Results

TaskDatasetMetricValueModel
Facial Recognition and Modelling300WNME_inter-ocular (%, Full)2.87ADNet-FE5
Facial Recognition and ModellingWFLWNME (inter-ocular)4.1ADNet-FE5
Face Reconstruction300WNME_inter-ocular (%, Full)2.87ADNet-FE5
Face ReconstructionWFLWNME (inter-ocular)4.1ADNet-FE5
3D300WNME_inter-ocular (%, Full)2.87ADNet-FE5
3DWFLWNME (inter-ocular)4.1ADNet-FE5
3D Face Modelling300WNME_inter-ocular (%, Full)2.87ADNet-FE5
3D Face ModellingWFLWNME (inter-ocular)4.1ADNet-FE5
3D Face Reconstruction300WNME_inter-ocular (%, Full)2.87ADNet-FE5
3D Face ReconstructionWFLWNME (inter-ocular)4.1ADNet-FE5

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