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Manifold Curvature From Covariance Analysis

机译:来自协方差分析的流形曲率

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Principal component analysis of cylindrical neighborhoods is proposed to study the local geometry of embedded Riemannian manifolds. At every generic point and scale, a high-dimensional cylinder orthogonal to the tangent space at the point cuts out a path-connected patch whose point-set distribution in ambient space encodes the intrinsic and extrinsic curvature. The covariance matrix of the points from that neighborhood has eigenvectors whose scale limit tends to the Frenet-Serret frame for curves, and to what we call the Ricci-Weingarten principal directions for submanifolds. More importantly, the limit of differences and products of eigenvalues can be used to recover curvature information at the point. The formula for hypersurfaces in terms of principal curvatures is particularly simple and plays a crucial role in the study of higher-codimension cases.
机译:提出了圆柱邻域的主成分分析,以研究嵌入式黎曼流形的局部几何形状。在每个通用点和比例尺上,与该点的切线空间正交的高维圆柱都切出一个路径连接的面片,该面片的周围空间中的点集分布编码了固有曲率和非固有曲率。来自该邻域的点的协方差矩阵具有特征向量,其特征值尺度趋向于曲线的Frenet-Serret框架,以及子流形的Ricci-Weingarten主方向。更重要的是,可以使用差异的极限和特征值的乘积来恢复该点处的曲率信息。就主曲率而言,超曲面的公式特别简单,并且在高维情况下的研究中起着至关重要的作用。

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