3.8 Proceedings Paper

Learning to Detect 3D Facial Landmarks via Heatmap Regression with Graph Convolutional Network

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ASSOC ADVANCEMENT ARTIFICIAL INTELLIGENCE

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资金

  1. National Key R&D Program of China [2021YFF0602101]
  2. National Science Foundation of China [NSFC 62106250]
  3. Liaoning Collaboration Innovation Center For CSLE

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This paper proposes a novel 3D facial landmark detection method, which directly locates the coordinates of landmarks from 3D point cloud with a customized graph convolutional network. The method learns geometric features adaptively with the assistance of constructed 3D heatmaps and further predicts 3D landmarks through a local surface unfolding and registration module.
3D facial landmark detection is extensively used in many research fields such as face registration, facial shape analysis, and face recognition. Most existing methods involve traditional features and 3D face models for the detection of landmarks, and their performances are limited by the hand-crafted intermediate process. In this paper, we propose a novel 3D facial landmark detection method, which directly locates the coordinates of landmarks from 3D point cloud with a well-customized graph convolutional network. The graph convolutional network learns geometric features adaptively for 3D facial landmark detection with the assistance of constructed 3D heatmaps, which are Gaussian functions of distances to each landmark on a 3D face. On this basis, we further develop a local surface unfolding and registration module to predict 3D landmarks from the heatmaps. The proposed method forms the first baseline of deep point cloud learning method for 3D facial landmark detection. We demonstrate experimentally that the proposed method exceeds the existing approaches by a clear margin on BU-3DFE and FRGC datasets for landmark localization accuracy and stability, and also achieves high-precision results on a recent large-scale dataset.

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