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Image Registration using Mutual Information

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Title: Image Registration using Mutual Information


1
Multi-Modal Image RegistrationGauge Co-ordinate
Mutual Information
Phil Legg School of Computer Science Cardiff
University
2
Contents
  • Introduction
  • Mutual Information
  • Gauge Co-ordinates Feature Derivatives
  • Incorporating Features with Mutual Information
  • Results
  • Future Work

3
Introduction
  • My Aim Successfully register multi-modal images.
    (e.g. Retinal images)?

4
What is the problem?
  • Images of different modalities may have little or
    no distinct intensity relationship.
  • Many possible transformation to be considered
  • Translation
  • Rotation
  • Scale

5
Introduction to Mutual Information
  • A comparison of statistical dependence between
    two images by measuring the spread of data.
  • Essentially a measure of how well one image
    predicts the other.
  • Allows mapping of different intensities for
    feature representation.
  • Ideal for Multi-Modal images.

6
Mutual Information Formula
I(A,B) H(A) H(B) - H(A,B)?
  • H(A) entropy of template
  • H(B) entropy of overlap ref. image
  • H(A,B) joint entropy
  • We wish to maximise I(A,B) to find the most
    suitable registration.

7
Problem?
  • Mutual Information gives poor results for our
    data...
  • Intensity relationship is too weak for MI to cope
    with
  • Little spatial information considered by MI

8
Successful Results
9
Unsuccessful Results
10
Gauge Co-ordinates
  • An alternate co-ordinate frame that is transform
    invariant.
  • Each pixel now has gradient information that
    gives spatial relation

11
Gauge Co-ordinates
  • We can take derivatives of an image using this
    new co-ordinate frame.
  • Can take derivatives of w and/or v, at multiple
    scales.
  • Higher order derivatives can be found by simple
    recursion

12
Gauge Co-ordinates
Lw
Original
Scale 2
Lwww
LwL2w
Scale 4
Scale 2
13
Incorporating Features with MI
  • We adapt the method proposed by Russakoff for
    Regional MI.
  • Generate intensity matrix P mxn
  • m number of feature images
  • n number of pixels
  • Normalise P P mean(P)?
  • Find Co-variance matrix C 1/N (PPT)?

14
Incorporating Features with MI
  • Entropy H(c) log((2pi)d/2det(c)1/2)?
  • d set of normally distributed points
  • c covariance matrix
  • MI H(CA) H(CB) H(C)?
  • CA m/2 x m/2 sub matrix of C (top-left)?
  • CB m/2 x m/2 sub matrix of C (bottom-right)?

15
Incorporating Features with MI
  • Any number of feature images can be incorporated
    using this technique
  • Neighbouring pixels can also be included (as
    proposed in original Regional MI)
  • How do we know which features should be used?

16
Sequential Forward Search
  • Determines a sub-set of elements, given a
    criteria to minimise (e.g. registration error)
  • Start with empty set, select elements to add to
    set that minimise criteria

17
Sequential Forward Search
Lw
Original
Scale 2
Lwww
LwL2w
Scale 4
Scale 2
18
Transformation Search
  • Image pyramid gives coarse-to-fine search
    approach
  • Simplex algorithm used to find optimal
    translation
  • Rotation and scale occur within fixed range
  • search all possible values at coarse level then
    refine through each pyramid level.

19
Results
20
Results
21
Further Work
  • Registration improvements
  • High accuracy achieved for clinical use
  • But... runtime issues, and the need for feature
    set training
  • Segmentation of Optic Nerve Head
  • Can multi-modal registration help aid
    segmentation?

22
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