Online Object Tracking Method Based on Incremental Bi-2DPCA Learning and Sparse Representation
A sparse representation and target tracking technology, which is applied in the field of online target tracking based on incremental Bi-2DPCA learning and sparse representation, and can solve the problems that the spatial structure and change of target features cannot be well described, and the real-time performance is not high.
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[0029] Now in conjunction with embodiment, accompanying drawing, the present invention will be further described:
[0030] 1) Mark the target x in the first frame 1 (x 1 is the affine transformation parameter of the target image block in the first frame), initialize N particles and their weights
[0031] 2) The first T frames of images use the classic particle filter algorithm to track the target, and get the initial target sample set A={A 1 ,A 2 ,...,A T}, A i Represents the target image block matrix in the i-th frame image, whose size is normalized to m×n;
[0032] 3) Calculate the covariance matrix of A in is the mean value of the elements in A. to G T Perform eigenvalue decomposition (EVD), and take the first q larger eigenvalues The corresponding eigenvectors constitute the right transformation matrix RT ∈R n*q . Put the elements in A in R T Up projection, get: P=AR T . Calculate P T The covariance matrix of to F T Perform eigenvalue decomposition ...
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