2008. 12. 15. 17:45
@GSMC/박래홍: Computer Vision
464p
10.3 Point distribution models
http://en.wikipedia.org/wiki/Point_distribution_model
Autostitch
1. Aligning the training data
the transformations to reduce (in a least-squares sense) the difference between an aligned shape and a 'mean' shape
2. Deriving the model
The eigen-vectors of then 2N*2N covariance matrix S will provides a basis, meaning that we can represent any vector x as a linear combination of the 2N different p_i.
http://en.wikipedia.org/wiki/Principle_Component_Analysis
the components of a basis vactor indicate how much variation is exhibited with respect to each of the eigenvectors
-> dimensinal compression of the representation
3. Fitting models to data
http://en.wikipedia.org/wiki/Eigenvalue,_eigenvector_and_eigenspace
http://en.wikipedia.org/wiki/Active_shape_model
Tim Cootes <An Introduction to Active Shape Models>
- overview paper about ASMs and AAMs (a useful introduction)
4. Extensions
475p
10.4 Active Appearance Models
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