Multiple unconstrained observations of the same object can be easily accessed by the Internet
with regard to overcoming the identification-difficult of the unconstrained samples.Moreover
to exploit the information of multiple observation sets to improve the classification performance
a multiple observation sets classification algorithm based on joint dynamic spare representation of low-rank decomposition is presented.First of all
we need find the best set of image transform domain
which decomposes the data matrix into a low-rank matrix and an associated sparse error matrix.Secondly
the low-rank matrix and sparse error matrix is represented by joint dynamic sparsity respectively
in order to make full use of the correlation of the class-level and the differences of the atom-level
i.e
the sparse representation vectors for the multiple observations can share the same class-level sparsity pattern while their atom-level sparsity patterns may be distinct.Finally
we compare the classification results with the total sparse reconstruction errors.Three comparative experiments are conducted on CMU-PIE face dataset
ETH-80 object recognition dataset
USPS handwritten digit dataset
and UMIST face dataset
and the results demonstrate the superiority of the proposed algorithm.