3d geometry for computer graphics
DESCRIPTION
3D Geometry for Computer Graphics. Class 3. Last week - eigendecomposition. We want to learn how the matrix A works:. A. Last week - eigendecomposition. If we look at arbitrary vectors, it doesn’t tell us much. A. Spectra and diagonalization. - PowerPoint PPT PresentationTRANSCRIPT
3D Geometry forComputer Graphics
Class 3
2
Last week - eigendecomposition
A
We want to learn how the matrix A works:
3
Last week - eigendecomposition
A
If we look at arbitrary vectors, it doesn’t tell us much.
4
Spectra and diagonalization
A
If A is symmetric, the eigenvectors are orthogonal (and there’s always an eigenbasis).
A = UUT
n
2
1
= Aui = i ui
5
The plan for today
First we’ll see some applications of PCA – Principal Component Analysis that uses spectral decomposition.
Then look at the theory. And then – the assignment.
6
PCA finds an orthogonal basis that best represents given data set.
The sum of distances2 from the x’ axis is minimized.
PCA – the general idea
x
y
x’
y’
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PCA – the general idea
PCA finds an orthogonal basis that best represents given data set.
PCA finds a best approximating plane (again, in terms of distances2)
3D point set instandard basis
x y
z
8
PCA – the general idea
PCA finds an orthogonal basis that best represents given data set.
PCA finds a best approximating plane (again, in terms of distances2)
3D point set instandard basis
9
Application: finding tight bounding box
An axis-aligned bounding box: agrees with the axes
x
y
minX maxX
maxY
minY
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Application: finding tight bounding box
Oriented bounding box: we find better axes!
x’y’
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Application: finding tight bounding box
This is not the optimal bounding box
x y
z
12
Application: finding tight bounding box
Oriented bounding box: we find better axes!
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Usage of bounding boxes (bounding volumes)
Serve as very simple “approximation” of the object Fast collision detection, visibility queries Whenever we need to know the dimensions (size) of the object
The models consist of thousands of polygons
To quickly test that they don’t intersect, the bounding boxes are tested
Sometimes a hierarchy of BB’s is used
The tighter the BB – the less “false alarms” we have
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Scanned meshes
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Point clouds
Scanners give us raw point cloud data How to compute normals to shade the surface?
normal
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Point clouds
Local PCA, take the third vector
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Notations
Denote our data points by x1, x2, …, xn Rd
11 11 2
22 21 2
1 2
, , ,
n
n
dd dn
xx x
xx x
xx x
1 2 nx x x
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The origin is zero-order approximation of our data set (a point)
It will be the center of mass:
It can be shown that:
The origin of the new axes
1
1
n
ini
m x
2
1
argminn
ii
x
m x - x
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Scatter matrix
Denote yi = xi – m, i = 1, 2, …, n
where Y is dn matrix with yk as columns (k = 1, 2, …,
n)
TS YY
1 1 1 1 21 2 1 1 12 2 2 1 21 2 2 2 2
1 21 2
dn
dn
d d d dn n n n
y y y y y y
y y y y y yS
y y y y y y
Y YT
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Variance of projected points
In a way, S measures variance (= scatterness) of the data in different directions.
Let’s look at a line L through the center of mass m, and project our
points xi onto it. The variance of the projected points x’i is:
Original set Small variance Large variance
21
1
var( ) || ||n
ini
L
x m
L L L L
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Variance of projected points
Given a direction v, ||v|| = 1, the projection of xi onto L = m + vt is:
|| || , / || || , Ti i i i x m v x m v v y v y
vm
xi
x’iL
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Variance of projected points
So,
2 2 21 1 1
1 1
21 1 1 1 1
var( ) || || ( ) || ||
|| || , ,
n n
i in n ni i
T T Tn n n n n
L Y
Y Y Y YY S S
T T
T T T
x -m v y v
v v v v v v v v v
2 21 1 1 1
1 22 2 2 2
2 1 2 1 2 21 2
1 1
1 2
( ) || ||
i n
n nT d di n
i i
d d d di n
y y y y
y y y yv v v v v v Y
y y y y
Tiv y v
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Directions of maximal variance
So, we have: var(L) = <Sv, v> Theorem:
Let f : {v Rd | ||v|| = 1} R,
f (v) = <Sv, v> (and S is a symmetric matrix).
Then, the extrema of f are attained at the eigenvectors of S.
So, eigenvectors of S are directions of maximal/minimal variance!
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Summary so far
We take the centered data vectors y1, y2, …, yn Rd
Construct the scatter matrix S measures the variance of the data points Eigenvectors of S are directions of maximal variance.
TS YY
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Scatter matrix - eigendecomposition
S is symmetric
S has eigendecomposition: S = VVT
S = v2v1 vd
1
2
d
v2
v1
vd
The eigenvectors formorthogonal basis
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Principal components
Eigenvectors that correspond to big eigenvalues are the directions in which the data has strong components (= large variance).
If the eigenvalues are more or less the same – there is no preferable direction.
Note: the eigenvalues are always non-negative. Think why…
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Principal components
There’s no preferable direction
S looks like this:
Any vector is an eigenvector
TV V
There is a clear preferable direction
S looks like this:
is close to zero, much smaller than .
TVV
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How to use what we got
For finding oriented bounding box – we simply compute the bounding box with respect to the axes defined by the eigenvectors. The origin is at the mean point m.
v2v1
v3
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For approximation
x
yv1
v2
x
y
This line segment approximates the original data set
The projected data set approximates the original data set
x
y
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For approximation
In general dimension d, the eigenvalues are sorted in descending order:
1 2 … d The eigenvectors are sorted accordingly. To get an approximation of dimension d’ < d, we
take the d’ first eigenvectors and look at the subspace they span (d’ = 1 is a line, d’ = 2 is a plane…)
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For approximation
To get an approximating set, we project the original data points onto the chosen subspace:
xi = m + 1v1 + 2v2 +…+ d’vd’ +…+dvd
Projection:
xi’ = m + 1v1 + 2v2 +…+ d’vd’ +0vd’+1+…+ 0 vd
Good luck with Ex1
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Technical remarks:
i 0, i = 1,…,d (such matrices are called positive semi-definite). So we can indeed sort by the magnitude of i
Theorem: i 0 <Sv, v> 0 v
Proof:
Therefore, i 0 <Sv, v> 0 v
,
( ) ( ) ,
T T T T
T T T T
S V V S S V V
V V
v v v v v v
v v v v v v
2 2 21 2, ... dS 1 2 dv v u u u