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Feature Space Gaussianization

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Title: Feature Space Gaussianization


1
Feature Space Gaussianization
  • George Saon, Satya Dharanipragada and Dan Povey
  • IBM T.J. Watson Rearch Center, Yorktown Heights,
    NY,10598
  • ICASSP 2004
  • ?? 2004/06/18

2
Gaussianization Transformation
  • Definition
  • X, Y are both random variables, Y T(X)
  • If random variable Y T(X) is normally
    distributed, then T is so-called Gaussianization
    Transformation
  • Problem
  • In general, its difficult to find the joint
    transformation
  • Makes the simplifying assumption that the
    dimensions are statistically independent

3
Gaussianization Transformation
  • Problem
  • This can be recast as finding n independent
    mappings
  • For clarity
  • we will drop the superscripts, and deal with only
    1-D
  • Notation

4
Gaussianization Transformation
  • Correspondingly, let Fx be the CDF of X
  • The aim
  • Finding such a transformation which minimize the
    KL divergence between

5
Gaussianization Transformation
  • Then px and py are related through the following
    equation
  • The second part represents the absolute value of
    the Jacobian of the transformation
  • the determinant of a matrix of derivatives
  • For 1-D, this is simply the derivative

6
Jacobian
7
Gaussianization Transformation
  • Its known that the divergence is minimized when
    the two distributions are point-wise the same
  • In order to find , it need to solve the
    differential
  • while applying the rule ,and assume
    that

8
Gaussianization Transformation
  • Now, we can get
  • Since the CDF of X is not available, we can
    approximate it with the following

9
Gaussianization Transformation
  • The final form of Gaussianization transform is

10
Gaussianization Transformation
11
Histogram Normalization
  • For each feature space dimension (training set)
  • For each condition and each
    feature space dimension (testing set)

12
Histogram Normalization
13
HTN V.S GT
  • ??
  • Both are non-linear transformation
  • ??
  • PDF, integration
  • ??
  • Cost
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