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首页> 外文期刊>SIAM Journal on Matrix Analysis and Applications >SCALING-ROTATION DISTANCE AND INTERPOLATION OF SYMMETRIC POSITIVE-DEFINITE MATRICES
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SCALING-ROTATION DISTANCE AND INTERPOLATION OF SYMMETRIC POSITIVE-DEFINITE MATRICES

机译:对称正定矩阵的尺度旋转距离和插值

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摘要

We introduce a new geometric framework for the set of symmetric positive-definite (SPD) matrices, aimed at characterizing deformations of SPD matrices by individual scaling of eigenvalues and rotation of eigenvectors of the SPD matrices. To characterize the deformation, the eigenvalue-eigenvector decomposition is used to find alternative representations of SPD matrices and to form a Riemannian manifold so that scaling and rotations of SPD matrices are captured by geodesics on this manifold. The problems of nonunique eigen-decompositions and eigenvalue multiplicities are addressed by finding minimal-length geodesics, which gives rise to a distance and an interpolation method for SPD matrices. Computational procedures for evaluating the minimal scaling-rotation deformations and distances are provided for the most useful cases of 2 x 2 and 3 x 3 SPD matrices. In the new geometric framework, minimal scaling-rotation curves interpolate eigenvalues at constant logarithmic rate, and eigenvectors at constant angular rate. In the context of diffusion tensor imaging, this results in better behavior of the trace, determinant, and fractional anisotropy of interpolated SPD matrices in typical cases.
机译:我们为对称正定(SPD)矩阵集引入了新的几何框架,旨在通过特征值的个体缩放和SPD矩阵的特征向量的旋转来表征SPD矩阵的变形。为了表征变形,特征值-特征向量分解用于查找SPD矩阵的替代表示并形成黎曼流形,以便SPD矩阵的缩放和旋转由该流形上的测地线捕获。通过找到最小长度的测地线,可以解决SPD矩阵的距离和内插方法,从而解决了非唯一特征分解和特征值多重性的问题。对于2 x 2和3 x 3 SPD矩阵的最有用情况,提供了用于评估最小缩放比例旋转变形和距离的计算程序。在新的几何框架中,最小的缩放旋转曲线以恒定的对数速率插值特征值,以恒定的角速率插值特征向量。在扩散张量成像的情况下,在典型情况下,这会导致插值SPD矩阵的迹线,行列式和分数各向异性的行为更好。

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