Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28...

57
Camera models and calibration Read tutorial chapter 2 and 3.1 http://www.cs.unc.edu/~marc/tutorial/ Szeliskis book pp.29-73

Transcript of Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28...

Page 1: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Camera models and calibration

Read tutorial chapter 2 and 3.1

http://www.cs.unc.edu/~marc/tutorial/

Szeliski’s book pp.29-73

Page 2: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Schedule (tentative)

2

# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry 5 Oct.19 Model fitting (RANSAC, EM, …) 6 Oct.26 Stereo Matching 7 Nov.2 Segmentation 8 Nov.9 Shape from Silhouettes 9 Nov.16 Optical Flow 10 Nov.23 Structure from motion 11 Dec.1 Tracking (Kalman, particle filter) 12 Dec.8 Object recognition 13 Dec.15 Object category recognition 14 Dec.22 Applications and demos

Page 3: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Brief geometry reminder

3

0=xlTl'×l=x x'×x=l

2D line-point coincidence relation: Point from lines:

2D Ideal points ( )T0,, 21 xx2D line at infinity ( )T1,0,0=l∞

0=XπT

0πXXX

3

2

1

=⎥⎥⎥

⎢⎢⎢

T

T

T

0Xπππ

3

2

1

=⎥⎥⎥

⎢⎢⎢

T

T

T3D plane-point coincidence relation: Point from planes: Plane from points:

Line from points:

3D line representation: (as two planes or two points) [ ] 2x2

PA B 0

Q⎡ ⎤

=⎢ ⎥⎣ ⎦

T

T

3D Ideal points ( )1 2 3, , ,0X X X T

3D plane at infinity ( )0,0,0,1∞Π =T

Page 4: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Conics and quadrics

4

lTC* l = 0xTCx = 0

l=Cx

l

x C

1-* CC =

0=QXXT 0=πQπ *T

Conics

Quadrics

Page 5: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Homographies

5

⎟⎟⎟

⎜⎜⎜

⎥⎥⎥

⎢⎢⎢

=⎟⎟⎟

⎜⎜⎜

3

2

1

333231

232221

131211

3

2

1

'''

xxx

hhhhhhhhh

xxx

Transformation for lines

l=l' -THTransformation for conics

-1-TCHHC ='Transformation for dual conics

THHCC ** ='

x=x' HFor a point transformation

Page 6: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Fixed points and lines

e=e λH

(eigenvectors H =fixed points)

l lλ=H-T

(eigenvectors H-T =fixed lines)

(λ1=λ2 ⇒ pointwise fixed line)

Page 7: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Hierarchy of 2D transformations

⎥⎥⎥

⎢⎢⎢

1002221

1211

y

x

taataa

⎥⎥⎥

⎢⎢⎢

1002221

1211

y

x

tsrsrtsrsr

⎥⎥⎥

⎢⎢⎢

333231

232221

131211

hhhhhhhhh

⎥⎥⎥

⎢⎢⎢

1002221

1211

y

x

trrtrr

Projective 8dof

Affine 6dof

Similarity 4dof

Euclidean 3dof

Concurrency, collinearity, order of contact (intersection, tangency, inflection, etc.), cross ratio

Parallellism, ratio of areas, ratio of lengths on parallel lines (e.g midpoints), linear combinations of vectors (centroids). The line at infinity l∞

Ratios of lengths, angles. The circular points I,J

lengths, areas.

invariants transformed squares

Page 8: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

The line at infinity

00

l l 0 lt 1

1A

−−

∞ ∞ ∞−

⎛ ⎞⎡ ⎤ ⎜ ⎟ʹ′ = = =⎢ ⎥ ⎜ ⎟−⎣ ⎦ ⎜ ⎟

⎝ ⎠

AH

A

TT

T T

The line at infinity l∞ is a fixed line under a projective transformation H if and only if H is an affinity

Note: not fixed pointwise

Page 9: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Affine properties from images

projection rectification

APA

lllHH⎥⎥⎥

⎢⎢⎢

=

321

010001

[ ] 0≠,l 3321∞ llll T=

Page 10: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Affine rectification v1 v2

l1

l2 l4

l3

l∞

21∞ vvl ×=

211 llv ×=

432 l×l=v

Page 11: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

The circular points

⎟⎟⎟

⎜⎜⎜

=

0

1I i

⎟⎟⎟

⎜⎜⎜

−=

0

1J i

I0

1

0

1

100cossinsincos

II =⎟⎟⎟

⎜⎜⎜

=⎟⎟⎟

⎜⎜⎜

⎥⎥⎥

⎢⎢⎢

−==ʹ′ iseitsstss

iy

x

Sθθθ

θθ

H

The circular points I, J are fixed points under the projective transformation H iff H is a similarity

Page 12: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

The circular points

“circular points”

0=++++ 233231

22

21 fxxexxdxxx 0=+ 2

221 xx

l∞

( )( )T

T

0,-,1J

0,,1I

i

i

=

=

( ) ( )TT 0,1,0+0,0,1=I i

Algebraically, encodes orthogonal directions

03 =x

Page 13: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Conic dual to the circular points

TT JIIJ*∞ +=C

⎥⎥⎥

⎢⎢⎢

=

000010001

*∞C

TSS HCHC *

∞*∞ =

The dual conic is fixed conic under the projective transformation H iff H is a similarity

*∞C

Note: has 4DOF l∞ is the nullvector

*∞C

l∞

I

J

Page 14: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Angles

( )( )2221

22

21

2211

+++

=cosmmll

mlmlθ

( )T321 ,,=l lll ( )T321 ,,=m mmm

Euclidean:

Projective: ( )( )mmll

mlcos**

*

∞∞

∞=CC

CTT

T

θ

0=ml *∞C

T

(orthogonal)

Page 15: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Transformation of 3D points, planes and quadrics

Transformation for planes

( )l=l' -TH

Transformation for quadrics ( )-1-TCHHC ='

Transformation for dual quadrics

( )THHCC ** ='

( )x=x' HFor a point transformation

X=X' H

π=π' -TH

-1-TQHH=Q'

THHQ=Q' **

(cfr. 2D equivalent)

Page 16: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Hierarchy of 3D transformations

⎥⎦

⎤⎢⎣

vTvtAProjective

15dof

Affine 12dof

Similarity 7dof

Euclidean 6dof

Intersection and tangency

Parallellism of planes, Volume ratios, centroids, The plane at infinity π∞

Angles, ratios of length The absolute conic Ω∞

Volume

⎥⎦

⎤⎢⎣

10tA

T

⎥⎦

⎤⎢⎣

10tR

T

s

⎥⎦

⎤⎢⎣

10tR

T

Page 17: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

The plane at infinity

000

π π π0- t 11

A

−−

∞ ∞ ∞−

⎛ ⎞⎜ ⎟⎡ ⎤ ⎜ ⎟ʹ′ = = =⎢ ⎥ ⎜ ⎟⎣ ⎦⎜ ⎟⎝ ⎠

AH

A

TT

T T

The plane at infinity π∞ is a fixed plane under a projective transformation H iff H is an affinity

1.  canonical position 2.  contains directions 3.  two planes are parallel ⇔ line of intersection in π∞ 4.  line // line (or plane) ⇔ point of intersection in π∞

( )T1,0,0,0=π∞ ( )T0,,,=D 321 XXX

Page 18: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

The absolute conic

The absolute conic Ω∞ is a fixed conic under the projective transformation H iff H is a similarity

04

23

22

21 =

⎭⎬⎫++

XXXX

The absolute conic Ω∞ is a (point) conic on π∞. In a metric frame:

( ) ( )T321321 ,,I,, XXXXXXor conic for directions: (with no real points)

1.  Ω∞ is only fixed as a set 2.  Circle intersect Ω∞ in two circular points 3.  Spheres intersect π∞ in Ω∞

Page 19: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

The absolute dual quadric

⎥⎦

⎤⎢⎣

⎡=Ω

000I*

∞ T

The absolute dual quadric Ω*∞ is a fixed conic under

the projective transformation H iff H is a similarity

1.  8 dof (to describe location in projective space) 2.  plane at infinity π∞ is the nullvector of Ω∞ 3.  Angles:

( )( )2*∞21

*∞1

2*∞1

πΩππΩππΩπ

=cosTT

T

θ

Page 20: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Camera model

Relation between pixels and rays in space

?

Page 21: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Pinhole camera

Gemma Frisius, 1544

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22

Distant objects appear smaller

Page 23: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

23

Parallel lines meet

•  vanishing point

Page 24: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

24

Vanishing points

VPL VPR H

VP1 VP2

VP3

To different directions correspond different vanishing points

Page 25: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

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Geometric properties of projection

•  Points go to points •  Lines go to lines •  Planes go to whole image

or half-plane •  Polygons go to polygons

•  Degenerate cases: –  line through focal point yields point –  plane through focal point yields line

Page 26: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Pinhole camera model

TT ZfYZfXZYX )/,/(),,(

⎟⎟⎟⎟⎟

⎜⎜⎜⎜⎜

⎥⎥⎥

⎢⎢⎢

=⎟⎟⎟

⎜⎜⎜

⎟⎟⎟⎟⎟

⎜⎜⎜⎜⎜

10100

1ZYX

ff

ZfYfX

ZYX

linear projection in homogeneous coordinates!

Page 27: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Pinhole camera model

⎟⎟⎟⎟⎟

⎜⎜⎜⎜⎜

⎥⎥⎥

⎢⎢⎢

=⎟⎟⎟

⎜⎜⎜

10100

ZYX

ff

ZfYfX

⎟⎟⎟⎟⎟

⎜⎜⎜⎜⎜

⎥⎥⎥

⎢⎢⎢

⎥⎥⎥

⎢⎢⎢

=⎟⎟⎟

⎜⎜⎜

1010101

1ZYX

ff

ZfYfX

PXx =

[ ]0|I)1,,(diagP ff=

Page 28: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Principal point offset

Tyx

T pZfYpZfXZYX )+/,+/(),,(

principal point Tyx pp ),(

⎟⎟⎟⎟⎟

⎜⎜⎜⎜⎜

⎥⎥⎥

⎢⎢⎢

=⎟⎟⎟

⎜⎜⎜

+

+

⎟⎟⎟⎟⎟

⎜⎜⎜⎜⎜

10100

1ZYX

pfpf

ZZpfYZpfX

ZYX

y

x

x

x

Page 29: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Principal point offset

⎟⎟⎟⎟⎟

⎜⎜⎜⎜⎜

⎥⎥⎥

⎢⎢⎢

=⎟⎟⎟

⎜⎜⎜

+

+

10100

ZYX

pfpf

ZZpfYZpfX

y

x

x

x

[ ] camX0|IKx =

⎥⎥⎥

⎢⎢⎢

=

1y

x

pfpf

K calibration matrix

Page 30: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Camera rotation and translation

( )C~-X~R=X~cam

X10RC-R

110C~R-RXcam ⎥

⎤⎢⎣

⎡=

⎟⎟⎟⎟⎟

⎜⎜⎜⎜⎜

⎥⎦

⎤⎢⎣

⎡=

ZYX

[ ] camX0|IKx = [ ]XC~-|IKRx =

[ ]t|RKP = C~R-t =PX=x

~

Page 31: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

CCD camera

⎥⎥⎥

⎢⎢⎢

=

1yy

xx

pp

K α

α

⎥⎥⎥

⎢⎢⎢

⎥⎥⎥

⎢⎢⎢

=

11y

x

y

x

pfpf

mm

K

Page 32: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

General projective camera

⎥⎥⎥

⎢⎢⎢

=

1yx

xx

pps

K α

α

⎥⎥⎥

⎢⎢⎢

=

1yx

xx

pp

K α

α

[ ]C~|IKRP =

non-singular

11 dof (5+3+3)

[ ]t|RKP =

intrinsic camera parameters extrinsic camera parameters

Page 33: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Radial distortion

•  Due to spherical lenses (cheap) •  Model:

R

2 2 2 2 21 2( , ) (1 ( ) ( ) ...)

xx y K x y K x y

y⎡ ⎤

= + + + + + ⎢ ⎥⎣ ⎦

R

http://foto.hut.fi/opetus/260/luennot/11/atkinson_6-11_radial_distortion_zoom_lenses.jpg straight lines are not straight anymore

Page 34: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Camera model

Relation between pixels and rays in space

?

Page 35: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Projector model

Relation between pixels and rays in space

(dual of camera) (main geometric difference is vertical principal point

offset to reduce keystone effect)

?

Page 36: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Meydenbauer camera

vertical lens shift to allow direct ortho-photographs

Page 37: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Affine cameras

Page 38: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Action of projective camera on points and lines

forward projection of line

( ) µbaµPBPAµB)P(AµX +=+=+=

back-projection of line

lPT=Π

PXlX TT =Π ( )PX x0;xlT ==

PXx =projection of point

Page 39: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Action of projective camera on conics and quadrics back-projection to cone

CPPQ Tco = 0CPXPXCxx TTT ==

( )PXx =

projection of quadric

TPPQC ** = 0lPPQlQ T*T*T ==ΠΠ

( )lPT=Π

Page 40: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

ii xX ↔ ? P

Resectioning

Page 41: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Direct Linear Transform (DLT)

ii PXx = [ ] ii PXx ×

rank-2 matrix

Page 42: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Direct Linear Transform (DLT)

Minimal solution

Over-determined solution

⇒  5½ correspondences needed (say 6) P has 11 dof, 2 independent eq./points

n ≥ 6 points

Apminimize subject to constraint

1p =

use SVD

Page 43: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Degenerate configurations

(i)   Points lie on plane or single line passing

through projection center

(ii)   Camera and points on a twisted cubic

Page 44: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Scale data to values of order 1 1.  move center of mass to origin 2.  scale to yield order 1 values

Data normalization

D3σD2σ

Page 45: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Line correspondences

Extend DLT to lines

ilPT=Π

ii 1TPXl

(back-project line)

ii 2TPXl (2 independent eq.)

Page 46: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Geometric error

Page 47: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Gold Standard algorithm

Objective Given n≥6 2D to 3D point correspondences {Xi↔xi’}, determine the Maximum Likelyhood Estimation of P

Algorithm (i)   Linear solution:

(a)  Normalization: (b)  DLT

(ii)   Minimization of geometric error: using the linear estimate as a starting point minimize the geometric error:

(iii)   Denormalization:

ii UXX~ = ii Txx~ =

UP~TP -1=

~ ~ ~

Page 48: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Calibration example

(i)  Canny edge detection (ii)  Straight line fitting to the detected edges (iii)  Intersecting the lines to obtain the images corners

typically precision <1/10 (H&Z rule of thumb: 5n constraints for n unknowns)

Page 49: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Errors in the world

Errors in the image and in the world

ii XPx

=

iX

Errors in the image

iPXx̂ =i

(standard case)

Page 50: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Restricted camera estimation

Minimize geometric error → impose constraint through parametrization

Find best fit that satisfies •  skew s is zero •  pixels are square •  principal point is known •  complete camera matrix K is known

Minimize algebraic error → assume map from param q → P=K[R|-RC], i.e. p=g(q) → minimize ||Ag(q)||

Page 51: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Restricted camera estimation

Initialization •  Use general DLT •  Clamp values to desired values, e.g. s=0, αx= αy Note: can sometimes cause big jump in error Alternative initialization •  Use general DLT •  Impose soft constraints

•  gradually increase weights

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Page 53: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Image of absolute conic

Page 54: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

A simple calibration device

(i)   compute H for each square (corners → (0,0),(1,0),(0,1),(1,1))

(ii)   compute the imaged circular points H(1,±i,0)T

(iii)   fit a conic to 6 circular points (iv)  compute K from ω through cholesky factorization

(≈ Zhang’s calibration method)

Page 55: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

Some typical calibration algorithms Tsai calibration

Zhangs calibration

http://research.microsoft.com/~zhang/calib/

Z. Zhang. A flexible new technique for camera calibration. IEEE Transactions on Pattern Analysis and Machine Intelligence, 22(11):1330-1334, 2000.

Z. Zhang. Flexible Camera Calibration By Viewing a Plane From Unknown Orientations. International Conference on Computer Vision (ICCV'99), Corfu, Greece, pages 666-673, September 1999.

http://www.vision.caltech.edu/bouguetj/calib_doc/

Page 56: Camera models and calibration - CVG...# date topic 1 Sep.21 Introduction and geometry 2 Sep.28 Invariant features 3 Oct.5 Camera models and calibration 4 Oct.12 Multiple-view geometry

80 from Szeliski’s book

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81

Next week: Multiple-view geometry