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EigenFaces and EigenPatches

EigenFaces and EigenPatches. Useful model of variation in a region Region must be fixed shape (eg rectangle) Developed for face recognition Generalised for face location object location/recognition. Overview. Model of variation in a region. Overview of Construction. Mark face region

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EigenFaces and EigenPatches

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  1. EigenFaces and EigenPatches • Useful model of variation in a region • Region must be fixed shape (eg rectangle) • Developed for face recognition • Generalised for • face location • object location/recognition

  2. Overview • Model of variation in a region

  3. Overview of Construction Mark face region on training set Sample region Normalise Statistical Analysis

  4. Sampling a region • Must sample at equivalent points across region • Place grid on image and rotate/scale as necessary • Use interpolation to sample image at each grid node

  5. Interpolation • Pixel values are known at integer positions • What is a suitable value at non-integer positions? Values known at integer values Estimate value here

  6. Interpolation in 1D • Estimate continuous function, f(x), that passes through a set of points (i,g(i)) f(x) x

  7. 1D Interpolation techniques f(x) Nearest Neighbour x f(x) Linear x f(x) Cubic x

  8. 2D Interpolation • Extension of 1D case Nearest Neighbour Bilinear y interp at x=0 y interp at x=1

  9. Representing Regions • Represent each region as a vector • Raster scan values n x m region: nm vector g

  10. Normalisation • Allow for global lighting variations • Common linear approach • Shift and scale so that • Mean of elements is zero • Variance of elements is 1 • Alternative non-linear approach • Histogram equalization • Transforms so similar numbers of each grey-scale value

  11. Review of Construction Mark face region on training set Sample region Normalise The Fun Step Statistical Analysis

  12. Multivariate Statistical Analysis • Need to model the distribution of normalised vectors • Generate plausible new examples • Test if new region similar to training set • Classify region

  13. Fitting a gaussian • Mean and covariance matrix of data define a gaussian model

  14. Principal Component Analysis • Compute eigenvectors of covariance, S • Eigenvectors : main directions • Eigenvalue : variance along eigenvector

  15. Eigenvector Decomposition • If A is a square matrix then an eigenvector of A is a vector, p, such that • Usually p is scaled to have unit length,|p|=1

  16. Eigenvector Decomposition • If K is an n x n covariance matrix, there exist n linearly independent eigenvectors, and all the corresponding eigenvalues are non-negative. • We can decompose K as

  17. Eigenvector Decomposition • Recall that a normal pdf has • The inverse of the covariance matrix is

  18. Fun with Eigenvectors • The normal distribution has form

  19. Fun with Eigenvectors • Consider the transformation

  20. Fun with Eigenvectors • The exponent of the distribution becomes

  21. Normal distribution • Thus by applying the transformation • The normal distribution is simplified to

  22. Dimensionality Reduction • Co-ords often correllated • Nearby points move together

  23. Dimensionality Reduction • Data lies in subspace of reduced dim. • However, for some t,

  24. Approximation • Each element of the data can be written

  25. Normal PDF

  26. Useful Trick • If x of high dimension, S huge • If No. samples, N<dim(x) use

  27. Building Eigen-Models • Given examples • Compute mean and eigenvectors of covar. • Model is then • P – First t eigenvectors of covar. matrix • b – Shape model parameters

  28. Eigen-Face models • Model of variation in a region

  29. Applications: Locating objects • Scan window over target region • At each position: • Sample, normalise, evaluate p(g) • Select position with largest p(g)

  30. Multi-Resolution Search • Train models at each level of pyramid • Gaussian pyramid with step size 2 • Use same points but different local models • Start search at coarse resolution • Refine at finer resolution

  31. Application: Object Detection • Scan image to find points with largest p(g) • If p(g)>pmin then object is present • Strictly should use a background model: • This only works if the PDFs are good approximations – often not the case

  32. Application: Face Recognition • Eigenfaces developed for face recognition • More about this later

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