Lecture 19 Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

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Lecture 19 Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

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Lecture 19 Continuous Problems: Backus-Gilbert Theory and Radon’s Problem. Syllabus. - PowerPoint PPT Presentation

Transcript of Lecture 19 Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Page 1: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Lecture 19

Continuous Problems:Backus-Gilbert Theory

andRadon’s Problem

Page 2: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

SyllabusLecture 01 Describing Inverse ProblemsLecture 02 Probability and Measurement Error, Part 1Lecture 03 Probability and Measurement Error, Part 2 Lecture 04 The L2 Norm and Simple Least SquaresLecture 05 A Priori Information and Weighted Least SquaredLecture 06 Resolution and Generalized InversesLecture 07 Backus-Gilbert Inverse and the Trade Off of Resolution and VarianceLecture 08 The Principle of Maximum LikelihoodLecture 09 Inexact TheoriesLecture 10 Nonuniqueness and Localized AveragesLecture 11 Vector Spaces and Singular Value DecompositionLecture 12 Equality and Inequality ConstraintsLecture 13 L1 , L∞ Norm Problems and Linear ProgrammingLecture 14 Nonlinear Problems: Grid and Monte Carlo Searches Lecture 15 Nonlinear Problems: Newton’s Method Lecture 16 Nonlinear Problems: Simulated Annealing and Bootstrap Confidence Intervals Lecture 17 Factor AnalysisLecture 18 Varimax Factors, Empircal Orthogonal FunctionsLecture 19 Backus-Gilbert Theory for Continuous Problems; Radon’s ProblemLecture 20 Linear Operators and Their AdjointsLecture 21 Fréchet DerivativesLecture 22 Exemplary Inverse Problems, incl. Filter DesignLecture 23 Exemplary Inverse Problems, incl. Earthquake LocationLecture 24 Exemplary Inverse Problems, incl. Vibrational Problems

Page 3: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Purpose of the Lecture

Extend Backus-Gilbert theory to continuous problems

Discuss the conversion ofcontinuous inverse problems to discrete problems

Solve Radon’s Problemthe simplest tomography problem

Page 4: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Part 1

Backus-Gilbert Theory

Page 5: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Continuous Inverse Theory

the data are discretebut

the model parameter is a continuous function

Page 6: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

One or several dimensions

Page 7: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

model functiondata

One or several dimensions

Page 8: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

hopeless to try to determine estimates of model function at a particular depth

m(z0) = ?localized average is the only way to go

Page 9: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

hopeless to try to determine estimates of model function at a particular depth

m(z0) = ?localized average is the only way to go

the problem is that an integral, such as the data kernel integral, does not depend upon the value of m(z) at a “single point” z0

continuous version of resolution matrix

Page 10: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

let’s retain the idea that the“solution”

depends linearly on the data

Page 11: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

let’s retain the idea that the“solution”

depends linearly on the data

continuous version of generalized inverse

Page 12: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

implies a formula for R

Page 13: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

<m>=G-gdcomparison to discrete case

d=Gm<m>=Rm

R=G-gG

Page 14: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

implies a formula for R

Page 15: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Now define the spread of resolution as

Page 16: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

fine generalized inverse

that minimizes the spread J with the constraint that

= 1

Page 17: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem
Page 18: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

J has exactly the same form as the discrete case

only the definition of S is different

Page 19: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Hence the solution is thesame as in the discrete case

where

Page 20: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

furthermore, just as we did in the discrete case, we can add the size of

the covariance

where

Page 21: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

and leads to a trade-off of resolution and variance

as beforethis just changes the definition of S

spread of resolution

size

of v

aria

nce α=1

α=0

Page 22: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Part 2

Approximating aContinuous Problemas a Discrete Problem

Page 23: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

approximation using finite number of known functions

Page 24: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

approximation using finite number of known functions

known functions

unknown coefficients= discrete model parameters

continuous function

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posssible fj(x)’s

voxels (and their lower dimension equivalents)

polynomials

splines

Fourier (and similar) series

and many others

Page 26: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

does the choice of fj(x) matter?

Yes!

The choice implements prior informationabout the properties of the solution

The solution will be different depending upon the choice

Page 27: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

conversion to discrete Gm=d

Page 28: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

special case of voxels

fi(x) =1 if x inside Vi0 otherwise

integral over voxel j

size controlled by the scale of variation of m(x)

Page 29: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

center of voxel j

approximation when Gi(x) slowly varying

size controlled by the scale of variation of Gi(x)

more stringent condition than scale of variation of m(x)

Page 30: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Part 3

Tomography

Page 31: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Greek Root

tomosa cut, cutting, slice, section

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“tomography”as it is used in geophysics

data are line integrals of the model function

curve i

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you can force this into the form

if you want

Gi(x)but the Dirac delta function is not square-

integrable, which leads to problems

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Radon’s Problem

straight line raysdata d treated as a continuous variable

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yu s

(u,θ) coordinate system forRadon Transform

integrate over this line

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Radon Transformm(x,y) → d(u,θ)

Page 37: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

-1 -0.5 0 0.5 1

-1

-0.5

0

0.5

1

true image

y

x

-1 -0.5 0 0.5 1

-1

-0.5

0

0.5

1

Radon transform

theta

u

-1 -0.5 0 0.5 1

-1

-0.5

0

0.5

1

reconstructed image

y

x

(A) m(x,y) (B) d(u,θ)

x

u

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Inverse Problem

find m(x,y) given d(u,θ)

Page 39: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Solution via Fourier Transforms

x→kx kx → x

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now Fourier transformu→ku

now change variables (u,θ) →(x,y)

Page 41: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

now Fourier transformu→ku

Fourier transform of m(x,y)evaluated on a line of slope θ

now change variables(s,u) →(x,y)Fourier transform

of d(u,θ)

J=1, by the way

Page 42: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

xθ0

yu d(u,θ0 )

ky

kxθ0

m(x,y) m(kx,ky)

FT

Page 43: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

Learned two things

1. Proof that solution exists and unique, based on “well-known” properties of Fourier Transform

2. Recipe how to invert a Radon transform using Fourier transforms

Page 44: Lecture 19  Continuous Problems: Backus-Gilbert Theory and Radon’s Problem

-1 -0.5 0 0.5 1

-1

-0.5

0

0.5

1

true image

y

x

-1 -0.5 0 0.5 1

-1

-0.5

0

0.5

1

Radon transform

theta

u

-1 -0.5 0 0.5 1

-1

-0.5

0

0.5

1

reconstructed image

y

x

(A) (B) (C)

y yθ

x xu