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Dimensionality reduction based on Lorentzian Manifold for face recognition

机译:基于洛伦兹流形的人脸识别降维

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Lorentzian geometry is a subject of mathematics and has famous applications in physics, especially in relativity theory. This geometry has interesting features, e.g. one axis has a negative sign in metric definition (time axis). In this study, we try to apply Lorentzian geometry for feature extraction and dimensionality reduction. We use a Lorentzian Manifold (LM) for face recognition and reduce the dimensionality in this new feature space. We compare results with different feature extraction methods; Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA) and Locality Preserving Projection (LPP). Our experiments show that the best feature extraction method is LM and it produces the best face recognition rates. It is also powerful in dimensionality reduction.
机译:洛伦兹几何是一门数学学科,在物理学中,尤其是在相对论中,有着著名的应用。这种几何形状具有有趣的功能,例如一个轴在度量标准定义(时间轴)中带有负号。在这项研究中,我们尝试将Lorentzian几何应用于特征提取和降维。我们使用Lorentzian流形(LM)进行人脸识别,并减少此新特征空间中的尺寸。我们将结果与不同的特征提取方法进行比较;主成分分析(PCA),线性判别分析(LDA)和局部性保留投影(LPP)。我们的实验表明,最好的特征提取方法是LM,它可以产生最佳的人脸识别率。它在降维方面也很强大。

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