ICCV13_log Euclidean kernels for sparse representation and dictionary learning

Symmetric positive definite matrices (SPD)    

Sparse Representation (SR) of SPD matrices

The space of SPD matrices -------a Lie group (Riemannian manifold)

Take full advantage of its geometric structure


A kernel-based method for SR

Dictionary Learning (DL) of SPD matrices

The space of SPD matrices, with the operations of logarithmic multiplication and scalar logarithmic multiplication defined in the Log-Euclidean framework, is a complete inner product space.


 Convariance matrices (model the second-order statistics of image features also result in SPD matrices)


在SPD稀疏编码过程中,主要考虑到的三个因素:

(1) the non-linear combination of atom matrices

(2) To evaluate the reconstruction error, the intrinsic distance between SPD matrices

(3) the updating of dictionary atoms


主要是把SR 扩展到lie group space中。

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