1625 signal processing and representation theory

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Signal Processingand

Representation Theory

Lecture 1

Outline:• Algebra Review

– Numbers– Groups– Vector Spaces– Inner Product Spaces– Orthogonal / Unitary Operators

• Representation Theory

Algebra ReviewNumbers (Reals)Real numbers, ℝ, are the set of numbers that we express in decimal notation, possibly with infinite, non-repeating, precision.

Algebra ReviewNumbers (Reals)Example: =3.141592653589793238462643383279502884197…

Completeness: If a sequence of real numbers gets progressively “tighter” then it must converge to a real number.

Size: The size of a real number aℝ is the square root of its square norm: 2aa

Algebra ReviewNumbers (Complexes)Complex numbers, , are the set of numbers that we ℂexpress as a+ib, where a,b and ℝ i= .

Example: ei=cos+isin

1

Algebra ReviewNumbers (Complexes)Let p(x)=xn+an-1xn-1+…+a1x1+a0 be a polynomial with ai .ℂ

Algebraic Closure:p(x) must have a root, x0 in :ℂ

p(x0)=0.

Algebra ReviewNumbers (Complexes)Conjugate: The conjugate of a complex number a+ib is:

Size: The size of a real number a+ibℂ is the square root of its square norm:

ibaiba

22)()( baibaibaiba

Algebra ReviewGroupsA group G is a set with a composition rule + that takes two elements of the set and returns another element, satisfying:

– Asscociativity: (a+b)+c=a+(b+c) for all a,b,cG.– Identity: There exists an identity element 0G such

that 0+a=a+0=a for all aG.– Inverse: For every aG there exists an element -aG

such that a+(-a)=0.If the group satisfies a+b=b+a for all a,bG, then the group is called commutative or abelian.

Algebra ReviewGroupsExamples:

– The integers, under addition, are a commutative group.– The positive real numbers, under multiplication, are a

commutative group.– The set of complex numbers without 0, under

multiplication, are a commutative group.– Real/complex invertible matrices, under multiplication

are a non-commutative group.– The rotation matrices, under multiplication, are a non-

commutative group. (Except in 2D when they are commutative)

Algebra Review(Real) Vector SpacesA real vector space is a set of objects that can be added together and scaled by real numbers.

Formally:A real vector space V is a commutative group with a scaling operator:

(a,v)→av,a , ℝ vV, such that:

1. 1v=v for all vV.2. a(v+w)=av+aw for all a , ℝ v,wV.3. (a+b)v=av+bv for all a,b , ℝ vV.4. (ab)v=a(bv) for all a,b , ℝ vV.

Algebra Review(Real) Vector SpacesExamples:• The set of n-dimensional arrays with real coefficients is a

vector space.• The set of mxn matrices with real entries is a vector space.• The sets of real-valued functions defined in 1D, 2D, 3D,…

are all vector spaces.• The sets of real-valued functions defined on the circle,

disk, sphere, ball,… are all vector spaces.• Etc.

Algebra Review(Complex) Vector SpacesA complex vector space is a set of objects that can be added together and scaled by complex numbers.

Formally:A complex vector space V is a commutative group with a scaling operator:

(a,v)→av,a , ℂ vV, such that:

1. 1v=v for all vV.2. a(v+w)=av+aw for all a , ℂ v,wV.3. (a+b)v=av+bv for all a,b , ℂ vV.4. (ab)v=a(bv) for all a,b , ℂ vV.

Algebra Review(Complex) Vector SpacesExamples:• The set of n-dimensional arrays with complex coefficients

is a vector space.• The set of mxn matrices with complex entries is a vector

space.• The sets of complex-valued functions defined in 1D, 2D,

3D,… are all vector spaces.• The sets of complex-valued functions defined on the

circle, disk, sphere, ball,… are all vector spaces.• Etc.

Algebra Review(Real) Inner Product SpacesA real inner product space is a real vector space V with a mapping V,V→ℝ that takes a pair of vectors and returns a real number, satisfying:

u,v+w= u,v+ u,w for all u,v,wV. αu,v=αu,v for all u,vV and all αℝ. u,v= v,u for all u,vV. v,v0 for all vV, and v,v=0 if and only if v=0.

Algebra Review(Real) Inner Product SpacesExamples:

– The space of n-dimensional arrays with real coefficients is an inner product space.If v=(v1,…,vn) and w=(w1,…,wn) then:

v,w=v1w1+…+vnwn

– If M is a symmetric matrix (M=Mt) whose eigen-values are all positive, then the space of n-dimensional arrays with real coefficients is an inner product space.If v=(v1,…,vn) and w=(w1,…,wn) then:

v,wM=vMwt

Algebra Review(Real) Inner Product SpacesExamples:

– The space of mxn matrices with real coefficients is an inner product space.If M and N are two mxn matrices then:

M,N=Trace(MtN)

Algebra Review(Real) Inner Product SpacesExamples:

– The spaces of real-valued functions defined in 1D, 2D, 3D,… are real inner product space.If f and g are two functions in 1D, then:

– The spaces of real-valued functions defined on the circle, disk, sphere, ball,… are real inner product spaces.If f and g are two functions defined on the circle, then:

dxxgxfgf )()(,

2

0)()(, dgfgf

Algebra Review(Complex) Inner Product SpacesA complex inner product space is a complex vector space V with a mapping V,V→ℂ that takes a pair of vectors and returns a complex number, satisfying:

u,v+w= u,v+ u,w for all u,v,wV. αu,v=αu,v for all u,vV and all αℝ.– for all u,vV. v,v0 for all vV, and v,v=0 if and only if v=0.

uv,vu,

Algebra Review(Complex) Inner Product SpacesExamples:

– The space of n-dimensional arrays with complex coefficients is an inner product space.If v=(v1,…,vn) and w=(w1,…,wn) then:

– If M is a conjugate symmetric matrix ( ) whose eigen-values are all positive, then the space of n-dimensional arrays with complex coefficients is an inner product space.If v=(v1,…,vn) and w=(w1,…,wn) then:

v,wM=vMwt

nn11 wv...wvwv, tMM

Algebra Review(Complex) Inner Product SpacesExamples:

– The space of mxn matrices with real coefficients is an inner product space.If M and N are two mxn matrices then:

NMNM, tTrace

Algebra Review(Complex) Inner Product SpacesExamples:

– The spaces of complex-valued functions defined in 1D, 2D, 3D,… are real inner product space.If f and g are two functions in 1D, then:

– The spaces of real-valued functions defined on the circle, disk, sphere, ball,… are real inner product spaces.If f and g are two functions defined on the circle, then:

dxxgxfgf )()(,

2

0)()(, dgfgf

Algebra ReviewInner Product SpacesIf V1,V2V, then V is the direct sum of subspaces V1, V2, written V=V1V2, if:

– Every vector vV can be written uniquely as:

for some vectors v1V1 and v2V2.21 vvv

Algebra ReviewInner Product SpacesExample:If V is the vector space of 4-dimensional arrays, then V is the direct sum of the vector spaces V1,V2V where:

– V1=(x1,x2,0,0)

– V2=(0,0,x3,x4)

Algebra ReviewOrthogonal / Unitary OperatorsIf V is a real / complex inner product space, then a linear map A:V→V is orthogonal / unitary if it preserves the inner product:

v,w= Av,Awfor all v,wV.

Algebra ReviewOrthogonal / Unitary OperatorsExamples:

– If V is the space of real, two-dimensional, vectors and A is any rotation or reflection, then A is orthogonal.

A=

v2v1

A(v2)

A(v1)

Algebra ReviewOrthogonal / Unitary OperatorsExamples:

– If V is the space of real, three-dimensional, vectors and A is any rotation or reflection, then A is orthogonal.

A=

Algebra ReviewOrthogonal / Unitary OperatorsExamples:

– If V is the space of functions defined in 1D and A is any translation, then A is orthogonal.

A=

Algebra ReviewOrthogonal / Unitary OperatorsExamples:

– If V is the space of functions defined on a circle and A is any rotation or reflection, then A is orthogonal.

A=

Algebra ReviewOrthogonal / Unitary OperatorsExamples:

– If V is the space of functions defined on a sphere and A is any rotation or reflection, then A is orthogonal.

A=

Outline:• Algebra Review• Representation Theory

– Orthogonal / Unitary Representations– Irreducible Representations– Why Do We Care?

Representation TheoryOrthogonal / Unitary RepresentationAn orthogonal / unitary representation of a group G onto an inner product space V is a map that sends every element of G to an orthogonal / unitary transformation, subject to the conditions:

1. (0)v=v, for all vV, where 0 is the identity element.2. (gh)v=(g) (h)v

Representation TheoryOrthogonal / Unitary RepresentationExamples:

– If G is any group and V is any vector space, then:

is an orthogonal / unitary representation.– If G is the group of rotations and reflections and V is

any vector space, then:

is an orthogonal / unitary representation.

vvg )(

vgvg )det()(

Representation TheoryOrthogonal / Unitary RepresentationExamples:

– If G is the group of nxn orthogonal / unitary matrices, and V is the space of n-dimensional arrays, then:

is an orthogonal / unitary representation.

vgvg )(

Representation TheoryOrthogonal / Unitary RepresentationExamples:

– If G is the group of 2x2 rotation matrices, and V is the vector space of 4-dimensional real / complex arrays, then:

is an orthogonal / unitary representation.

),(),,(,,,)( 43214321 xxgxxgxxxxg

Representation TheoryIrreducible RepresentationsA representation , of a group G onto a vector space V is irreducible if cannot be broken up into smaller representation spaces.That is, if there exist WV such that:

(G)WWThen either W=V or W=.

Representation TheoryIrreducible RepresentationsIf WV is a sub-representation of G, and W is the space of vectors perpendicular to W:

v,w=0for all vW and wW, then V=WW and W is also a sub-representation of V.For any gG, vW, and wW, we have:

So if a representation is reducible, it can be broken up into the direct sum of two sub-representations.

wvgwggvgwgv ,,,0 11

Representation TheoryIrreducible RepresentationsExamples:

– If G is any group and V is any vector space with dimension larger than one, then:

is not an irreducible representation.

vvg )(

Representation TheoryIrreducible RepresentationsExamples:

– If G is the group of 2x2 rotation matrices, and V is the vector space of 4-dimensional real / complex arrays, then:

is not an irreducible representation since it maps the space W=(x1,x2,0,0) back into itself.

),(),,(,,,)( 43214321 xxgxxgxxxxg

Representation Theory

Why do we care?

Representation TheoryWhy we careIn shape matching we have to deal with the fact that rotations do not change the shape of a model.

=

Representation TheoryExhaustive SearchIf vM is a spherical function representing model M and vn is a spherical function representing model N, we want to find the minimum over all rotations T of the equation:

NMNM

NMNM

vTvvvvTvvvT

,2),,(

22

2

D

Representation TheoryExhaustive SearchIf V is the space of spherical functions then we can consider the representation of the group of rotations on this space.

By decomposing V into a direct sum of its irreducible representations, we get a better framework for finding the best rotation.

Representation TheoryExhaustive Search (Brute Force)Suppose that {v1,…,vn} is some orthogonal basis for V, then we can express the shape descriptors in terms of this basis:

vM=a1v1+…+anvn

vN=b1v1+…+bnvn

Representation TheoryExhaustive Search (Brute Force)Then the dot-product of M and N at a rotation T is equal to:

n

jijiji

n

jjj

n

iii

n

jjj

n

iiiNM

vTvba

vTbva

vbTvavTv

1,

11

11

,

,

,,

n

jijijiNM vTvbavTv

1,

,,

Representation TheoryExhaustive Search (Brute Force)So that the nxn cross-multiplications are needed:

T(vn)

vM

v1

v2

vn

=

+

++

T(v1)

=

+

++

T(v2)T(vN)… …

Representation TheoryExhaustive Search (w/ Rep. Theory)Now suppose that we can decompose V into a collection of one-dimensional representations.

That is, there exists an orthogonal basis {w1,…,wn} of functions such that T(wi)wiℂ for all rotations T and hence:

wi,T(wj)=0 for all i≠j.

Representation TheoryExhaustive Search (w/ Rep. Theory)Then we can express the shape descriptors in terms of this basis:

vM=α1w1+…+αnwn

vN=β1w1+…+βnwn

Representation TheoryExhaustive Search (w/ Rep. Theory)And the dot-product of M and N at a rotation T is equal to:

n

iiiii

n

jijiji

n

jjj

n

iii

n

jjj

n

iiiNM

wTw

wTw

wTw

wTwvTv

1

1,

11

11

,

,

,

,,

n

iiiiiNM wTwvTv

1

,,

Representation TheoryExhaustive Search (w/ Rep. Theory)So that only n multiplications are needed:

T(wn)

vM

w1

w2

wn

=

+

++

T(w1)

=

+

++

T(w2)T(vN)… …