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Sparse coding-based representation of LBP difference for 30/4D facial expression recognition

机译:30 / 4D面部表情识别的基于稀疏编码的LBP差异表示

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摘要

This paper presents an effective method for automated 3D/4D facial expression recognition based on Mesh-Local Binary Pattern Difference (mesh-LBPD). In contrast to most of existing methods, the proposed mesh-LBPD is based on a unified set of geometric and appearance features of different facial regions. Indeed, multiple features are combined into a compact form using covariance matrices, namely Cov - 3D - LBP. Then, the Cov - 3D - LBP atoms are represented as sparse data combinations. To that end, a Riemannian optimization objective for dictionary learning and sparse coding is used, in order to reduce the complexity of the problem, and the representation loss is characterized via an affine invariant Riemannian metric. In order to prove the effectiveness of the proposed compact combination of geometric and appearance features, we conducted extensive experimental validations on real-world datasets. In fact, obtained results show the capability of the proposed method to significantly outperform, or achieve comparable performances with, the state-of-the-art methods.
机译:本文提出了一种有效的基于网格局部二进制模式差异(mesh-LBPD)的3D / 4D面部表情自动识别方法。与大多数现有方法相反,提出的mesh-LBPD基于不同面部区域的几何和外观特征的统一集合。实际上,使用协方差矩阵(即Cov-3D-LBP)将多个特征组合为紧凑形式。然后,将Cov-3D-LBP原子表示为稀疏数据组合。为此,为了减少问题的复杂性,使用了字典学习和稀疏编码的黎曼优化目标,并且通过仿射不变黎曼度量来表征表示损失。为了证明所提出的紧凑的几何和外观特征组合的有效性,我们对现实世界的数据集进行了广泛的实验验证。实际上,获得的结果表明,所提出的方法具有明显优于现有方法或达到与之相当的性能的能力。

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