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Fully Automated Facial Expression Recognition Using 3D Morphable Model and Mesh-Local Binary Pattern

机译:使用3D可变形模型和网格局部二值模式的全自动面部表情识别

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With recent advances in artificial intelligence and pattern recognition, automatic facial expression recognition draws a great deal of interest. In this area, most of works involved 2D imagery. However, they present some challenges related to pose, illumination variation and self-occlusion. To deal with these problems, we propose to reconstruct the face in 3D space, from only one 2D image, using the 3D Morphable Model (3DMM). Thus, thanks to its robustness against pose and illumination variations, 3DMM offers high-resolution model and fast fitting functionality. Then, given the reconstructed 3D face, we extract a set of features, which are effective to describe shape changes and expression-related facial appearance, using Mesh-Local Binary Pattern (mesh-LBP). Obtained results proved the effectiveness of combining 3DMM and mesh-LBP for automatic facial expression recognition from 2D single image. In fact, to evaluate the proposed method against state-of-the-art methods, a comparative study shows that the method outperforms existing ones.
机译:随着人工智能和模式识别的最新发展,自动面部表情识别引起了极大的兴趣。在这一领域,大多数作品都涉及2D图像。但是,它们提出了一些与姿势,照明变化和自我遮挡有关的挑战。为了解决这些问题,我们建议使用3D变形模型(3DMM)从一张2D图像中重建3D空间中的人脸。因此,由于3DMM具有抵御姿势和照明变化的鲁棒性,因此可以提供高分辨率模型和快速拟合功能。然后,给定重建的3D脸部,我们使用网格局部二值模式(mesh-LBP)提取一组有效地描述形状变化和与表情相关的面部外观的特征。所得结果证明了结合3DMM和mesh-LBP进行2D单幅图像自动面部表情识别的有效性。实际上,将评估的方法与最新方法进行比较,一项比较研究表明,该方法优于现有方法。

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