Presentation is loading. Please wait.

Presentation is loading. Please wait.

Outline Singular Value Decomposition Example of PCA: Eigenfaces.

Similar presentations


Presentation on theme: "Outline Singular Value Decomposition Example of PCA: Eigenfaces."— Presentation transcript:

1 Outline Singular Value Decomposition Example of PCA: Eigenfaces

2 Singular Value Decomposition
A sample set of M N-dimensional points can be written as a matrix each row of which represents a sample point. PCA of the sample is then equivalent to solving the SVD problem for this matrix; that is, finding the decomposition W is diagonal matrix, V is orthogonal square matrix, columns of U are orthogonal, columns of V are orthogonal : Also

3 SVD-remarks Meaning: columns of V represent the KL transform axes, ordered by respective values in W (singular values), which are amount of variation, in descending order. The new axes (columns of V) are also eigenvectors of XXT if X is square matrix From the orthogonal basis vectors given as columns of V we omit those to which correspond small values in W. SVD provides unique decomposition for the given data. Taking the first m<N eigenvectors (rows in VT) we get the optimal approximation in the sense of L2 norm.

4 SVD-remarks When M<N the singular values wj for j=M+1,…,N are zero.


Download ppt "Outline Singular Value Decomposition Example of PCA: Eigenfaces."

Similar presentations


Ads by Google