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New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation Jin Zhou June 16 th , 2009 Dissertation Defense

New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

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New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation. Jin Zhou June 16 th , 2009 Dissertation Defense. Outline. Introduction Rectification based on Virtual Sequential Rotation Image Rectification for Stereoscopic Visualization Camera Calibration - PowerPoint PPT Presentation

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Page 1: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Jin ZhouJune 16th, 2009

Dissertation Defense

Page 2: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Outline

Introduction Rectification based on Virtual Sequential Rotation Image Rectification for Stereoscopic Visualization Camera Calibration Stereoscopic View Synthesis from Monocular

Endoscopic Sequences Rapid Cones and Cylinders Modeling from Single

Images Robot Vision Conclusions and Future Work

Page 3: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

The Geometry of 3D to 2D

Images are 2D projections of the 3D world

Page 4: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

3D Vision – The Problem

?

How do we extract 3D information from 2D images?

? ? ??

3D of the objects

3D of the cameras

Page 5: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

3D Vision – Applications

Augmented Reality Iron Man, Lord of Rings, Kingkong

Scene ModelingGoogle SketchUp, Autodesk ImageModeler

Virtual Touring Microsoft PhotoSynth

3D Visualization 3D Gaming, 3D Movies, 3D Medical Images

Robots

Page 6: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

3D Vision – A Human Perspective

Size Linear Perspective Object Connections Stereo Motion Occlusion Shading

Page 7: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

3D Vision – Computational Approaches

Different approaches use different cues Different problems require different approaches. Structure from Motion (SfM)

Rely on point correspondences Single View Based Modeling (SVBM)

Rely on knowledge of the scene Camera calibration

All approaches require the images are calibarated first (either manual or automatic)

Page 8: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

3D Vision – Practical Challenges

Camera information is often unavailable Point correspondences are not reliable

and computationally costly to compute Image resolution is limited in many

applications Degeneracy

Page 9: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

3D Vision – Limitations of Current Approaches

Distortion Degeneracy

Due to high degree of freedom of geometric models

Lack of geometric meaningMost approaches are purely based on

algebraic derivations or imaginary objects. Not accurate or not convenient (SVBM).

Page 10: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

3D Vision – Our Contributions

Novel image rectification schemes are proposed based on sequential virtual rotation

Novel approaches are proposed for the following problems Image rectification for stereoscopic visualization Camera calibration Stereoscopic view synthesis from monocular

endoscopic sequences Rapid cones and cylinders modelingMonocular-vision-guided mobile robot navigation

Page 11: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

3D Vision – Results of Our Approaches

No affine/projective distortion Can handle degeneracy Intuitive geometric meanings

Lead to useful insights for some practical problems

Accurate and fast

Page 12: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Publications & Manuscripts Journals

Jin Zhou and Baoxin Li, "Image Rectification for Stereoscopic Visualization", Journal of the Optical Society of America A (JOSA), Vol. 25, No. 11, pp. 2721-2733, 2008.

Wenfeng Li, Jin Zhou, Baoxin Li, and M. Ibrahim Sezan, " Virtual View Specification and Synthesis for Free Viewpoint Television", IEEE Transactions on Circuit and Systems for Video Technologies , Vol, 19, No. 4, pp.533-546, 2009.

Jin Zhou and Baoxin Li, "Rapid Cones and Cylinders Modeling from a Single Calibrated Image Using Minimal 2D Control Points", submitted to Machine Vision and Applications (under revision)

Jin Zhou and Baoxin Li, “Stereoscopic View Synthesis from Monocular Endoscopic Image Sequences“,(manuscript under internal revision; to be submitted to IEEE Transactions on Medical Imaging by the end of June 2009)

Jin Zhou and Baoxin Li, “Image Rectification Based on Infinity Homography”, (manuscript under internal revision; to be submitted to IEEE Transactions on Image Processing by the end of June 2009)

Refereed Conference papers Jin Zhou, Ananya Das, Feng Li, Baoxin Li, "Circular Generalized Cylinder Fitting for 3D

Reconstruction in Endoscopic Imaging Based on MRF", In 9th IEEE Computer Society Workshop on Mathematical Methods in Biomedical Image Analysis (Joint with CVPR 2008).

Jin Zhou and Baoxin Li, "A Four Point Algorithm for Fast Metric Cone Reconstruction from a Calibrated Image", In 4th International Symposium on Visual Computing (ISVC), 2008.

Xiaolong Zhang, Jin Zhou and Baoxin Li, "Robust Two-view External Calibration by Combining Lines and Scale Invariant Point features", In 4th International Symposium on Visual Computing (ISVC) 2008.

Page 13: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Publications (Cont’d) Jin Zhou and Baoxin Li, “Exploiting Vertical Lines in Vision-Based Navigation for

Mobile Robot Platforms”, International Conference on Acoustics, Speech, and Signal Processing (ICASSP), 2007.

Xiaokun Li, Roger Xu, Jin Zhou, Baoxin Li, "Creating Stereoscopic (3D) Video from a 2D Monocular Video Stream", In 3rd International Symposium on Visual Computing (ISVC), 2007.

Wenfeng Li, Jin Zhou, Baoxin Li, M. Ibrahim Sezan, "Virtual View Specification and Synthesis in Free Viewpoint Television Application", 3D Data Processing, Visualization and Transmission (3DPVT), 2006.

Jin Zhou and Baoxin Li, "Image Rectification for Stereoscopic Visualization without 3D Glasses", ACM International Conference on Image and Video Retrieval (CIVR), 2006.

Jin Zhou and Baoxin Li, “Homography-based Ground Detection for a Mobile Robot Platform using a Single Camera”, International Conference on Robotics and Automation (ICRA), 2006.

Jin Zhou and Baoxin Li, “Robust Ground Plane Detection with Normalized Homography in Monocular Sequences from a Robot Platform”, International Conference on Image Processing (ICIP), 2006.

Jin Zhou and Baoxin Li, “Rectification with Intersecting Optical Axes for Stereoscopic Visualization”, International Conference on Pattern Recognition (ICPR), 2006.

Page 14: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Outline

Introduction Rectification based on Virtual Sequential Rotation Image Rectification for Stereoscopic Visualization Camera Calibration Stereoscopic View Synthesis from Monocular

Endoscopic Sequences Rapid Cones and Cylinders Modeling from Single

Images Robot Vision Conclusions and Future Work

Page 15: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

What is Image Rectification?

Image rectification is a process to transform the original images to new images which have desired properties.

Page 16: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

General Image Transformations

H?

Image transformation can be defined by a 3x3 matrix H, which is called Homography.

xx' H

Page 17: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Image Rectification based on Virtual Rotation

Homography of camera rotation/zooming

If we normalize the coordinates

Assume R = I

[ | ], ' ' '[ | ]P KR I C P K R I C

1 1x ' ' ' '[ | ] ' '( ) [ | ] ( ' ')( ) xP X K R I C X K R KR KR I C X K R KR

1( ' ')( )H K R KR

1x xK 1x' ' x'K

ˆ 'H R Camera orientation is determined at the same time

Page 18: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Advantages of the New Rectification Schemes Intuitive geometric meaning Robust

Rotation parameters can be computed by various basic image features, such as points, lines and circles.

Can be used for camera calibration. Can be used for 3D information extraction. Lead to non-distorted results

Reason: Rotation do not introduce affine/projective distortion

Page 19: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Rotations are Decomposed as Euler Angles

1 0 0

( ) 0 cos( ) sin( )

0 sin( ) cos( )xR

cos( ) 0 sin( )

( ) 0 1 0

sin( ) 0 cos( )yR

cos( ) sin( ) 0

( ) sin( ) cos( ) 0

0 0 1zR

pitch

yaw

roll

Page 20: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Rotation Parameters Can Be Estimated by Basic Image Features

Each rotation has only one degree of freedom and thus only needs one constraint.

Example: transforming a point on to y axis

ˆ (0, , )TzR p d c

cos( ) sin( ) 0a b

tan( , )arc a b

/ 2

[ ] / 2

otherwize

[ tan( , )]arc a b Ambiguity!

Normalize

Page 21: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Outline

Introduction Rectification based on Virtual Sequential Rotation Image Rectification for Stereoscopic Visualization Camera Calibration Stereoscopic View Synthesis from Monocular

Endoscopic Sequences Rapid Cones and Cylinders Modeling from Single

Images Robot Vision Conclusions and Future Work

Page 22: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Image Rectification for Stereoscopic (3D) Visualization

The Principle of Stereoscopic (3D) Visualization

Nielsen Consumer Insight 2009 Industry Outlook: Cinema admissions will increase fueled by growing availability of 3D movies and theatres.

Deloitte: 3D becomes an obligation, not an option, at the movies

Page 23: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

The Problem

Given two arbitrary images, rectify them so that the results look like a stereo pair.

stereo camera setupgeneral camera setup

Page 24: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

An Example

Page 25: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Motivation

Stereo content is scarce Stereo cameras/camcorders are expensive Common users seldom use stereo

cameras/camcorders Price of a current 3D Display is affordable We want to generate stereo content from

images/videos taken by common cameras

Page 26: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Our Approach – Rectification based on Virtual Rotation

We can “rotate” cameras to standard stereo setup.

1( )i i iH KR K R

1H

2H

Page 27: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Calibrated Case

( , , )TR r s t

1 2 1 2( ) / || ||r C C C C

( ) / || ||t r p r p

s r t

1( )i i iH KR K R

Known

UnKnown

Constraints of the stereo camera pair:1. The two cameras have the same intrinsic parameters (K)

and orientation (R)2. The camera’s optical axis is perpendicular to the baseline

(C1 – C2) i.e. the camera’s x axis has the same direction with the

baseline

K1 Any vector

Page 28: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Uncalibrated Case

For the uncalibrated case, all K, R and C are unknown. We can only start from the fundamental matrix and point correspondences.

Estimate H2 (homography for the second image)

2

0 / 2

0 with / 2

0 0 1 ( ) / 2

x x

y y

f p p w

K K f p p h

f w h

2R I

1( )i i iH KR K R ?

Page 29: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Determine R based on Sequential Virtual Rotation

2ˆ (1,0,0)TRe 12 2 2e K eConstraints:

First rotate around z axis so that the point is transformed to x axis (i.e. y = 0)

y zR R R

( , , ) ( ,0, )T TzR a b c d c

( ,0, ) ( ,0,0) (1,0,0)T T TyR d c e

[arctan( , )]z b a

[arctan( , )]y c d

Rotate around y axis so that the point is transformed to infinity.

In stereo pair, the epipole is at horizontal infinity

Page 30: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Estimate H1

1 11 1 1 2 2 2 1 1 2( ) ( )H KR K R H K R K R H M

2 0( )TM I e v M 2[ ]F e M

1 2

2 2 0

2 0 2 0

12 0 2 2 2 2 0

12 2 1 2 0 1 2

( )

( )

( ) ( = )

T

T

T

T T T

H H M

H I e v M

H M e v M

H M H e v H H M

I H e v H M v v H

12 2 2 2 [ , , ]

(1,0,0) ( ,0,0)

T

T T

H e KRK e K r s t r

K k

1 2 2 2 0 2 0( )

0 1 0

0 0 1

TA

A

H I H e v H M H H M

a b c

H

0 2 2[ ] TM e F e v

Page 31: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Estimate H1

Determine a, b and c Property of standard stereo setup:

For two points with the same depth, their projection on different images should have the same distance (Points with the same depth should have the same disparity).

ApproachGroup points by similar disparities Then compute a, b by minimizing

2

1 1 2 2,

(|| x x || | x ' x ' ||)p

i j i jp i j A

H H H H

2

,

ˆ ˆ ˆ ˆ ˆ ˆ( ( ) ( ) ( ' '))p

i i i j i jp i j A

a x x b y y x x

0 0 0ˆ ˆ ˆ 'ax by c x

Page 32: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Results

Original Pair Hartley’s Method Our Method

Shear distortion

Page 33: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Results

Original Pair Hartley’s Method Our Method

Shrink horizontally

Page 34: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Outline

Introduction Rectification based on Virtual Sequential Rotation Image Rectification for Stereoscopic Visualization Camera Calibration Stereoscopic View Synthesis from Monocular

Endoscopic Sequences Rapid Cones and Cylinders Modeling from Single

Images Robot Vision Conclusions and Future Work

Page 35: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Camera Auto-Calibration from the Fundamental Matrix

Ti i iw K K

2 2 2 1[ ] [ ] Te w e Fw F Kruppa Equations

dual image of the absolute conic

Huang-Faugeras constraints

2 2

2 1

1( ) ( ) 0

2T T

T

trace EE trace EE

E K FK

Cons: Complex and hard to understand!Derivation for degenerate cases are purely algebraic.

Traditional Approaches:

Page 36: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Our Approach

12 2 2 1 1 1

1 1 1 2 2 2( , , , , , , )

T T T Sz y x y z

z y x z y

F K R R F R R R K

f f

We transform the original pair to a standard stereo pair through sequential virtual rotation and zooming

0 0 0

0 0 1

0 1 0

SF

F

7 DOFs

7 Parameters

Page 37: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Decomposition Illustration

Page 38: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Solving The Equation1

2 2 2 1 1 1

1 1 1 2 2 2( , , , , , , )

T T T Sz y x y z

z y x z y

F K R R F R R R K

f f

1 12 1 2 2 1 1

T T Sz z z y x yF R FR K R F R R K

2 1

2 1

0 0 0 0

0 1 0 0 1 0

0 0 0 0z

c a b a c

F c d c

d a b a d

1 21 2

2

2 1 1 2

1 1 2

sin( ), cos( ),cos( )

cos( ), sin( )cos( ) cos( ) cos( )

x xy

x xy y y

f da f f c

f d d db d

1 1 1 1( ) ( ,0, )Tz zR e d c

2

2 22 21 2

1 22 21 2

( )

,

x

adtg

bc

acd abdf f

bd acc cd abc

2 2 22 1 1 1

1 2 21 1

2 2 22 2 2 2

2 2 22 2

( )

( )

y

y

f c acctg

d bd acc

f c abctg

d cd abc

1 1 1 1( , , )e a b c1 1 1arctan( / )z b a

1 0Fe

1 1 1 1( ) /ytg f c d

Page 39: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Degeneracy Analysis

Page 40: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Degeneracy Analysis

Page 41: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Results of Monte Carlo Simulation

Page 42: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Outline

Introduction Rectification based on Virtual Sequential Rotation Image Rectification for Stereoscopic Visualization Camera Calibration Stereoscopic View Synthesis from Monocular

Endoscopic Sequences Rapid Cones and Cylinders Modeling from Single

Images Robot Vision Conclusions and Future Work

Page 43: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Stereoscopic View Synthesis From Monocular Endoscopic Videos

3D imaging helps to enable faster and safer surgical operations

Two-view image rectification cannot be applied to the new problem

Page 44: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

The Framework

We proved:1. Affine 3D reconstruction is

sufficient.2. Linear interpolation in

normalized disparity field is equal to linear interpolation in 3D space.

Challenges: 1. Image quality is poor 2. Degeneracy

Page 45: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Strategy for Solving Degeneracy

We assume the initial two frames have same orientation (i.e. they are rectified)

The assumption makes the DOF of the fundamental matrix from 8 to 2!

No Assumption

Assume the two frame are rectified

Degeneracy!

Page 46: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Interpolation

a) Shows the disparities based on the SfM results

b) We do Delaunay triangulation and interpolate each triangle

c) We pick a set of grid points from b) and do bilinear interpolation

d) We fill holes using Laplacian interpolation and do smoothing.

Page 47: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Results of Synthetic Data

Ground truth

Stereo images

Final disparity image

Disparity image after triangulation

Page 48: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Results of Real Data

gray

fryover

creel

Page 49: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Outline

Introduction Rectification based on Virtual Sequential Rotation Image Rectification for Stereoscopic Visualization Camera Calibration Stereoscopic View Synthesis from Monocular

Endoscopic Sequences Rapid Cones and Cylinders Modeling from Single

Images Robot Vision Conclusions and Future Work

Page 50: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Rapid Cylinders and Cones Modeling from A Single Image

Page 51: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Overview of Our Approach

Goal: Rapid + Accurate Camera Calibration (Orientation Estimation)

Vertical lines Vanishing line of horizontal plane A Cone

Modeling from Image Cones (two points / four points) Cylinders (two points / four points)

Page 52: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

The Coordinate Systems

(X,Y,Z,O) -- World Coordinate SystemY is perpendicular to the ground

(x,y,z,O) -- Camera Coordinate SystemCamera center is at the origin

Observation: Most objects stand on the ground

Page 53: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Orientation Estimation from Vertical Lines

(0,1,0)T( , , )Ta b c R

First rotate around z axis so that the vanishing point is transformed to y axis

Rotate around x axis so that the vanishing point is transformed to infinity.

Page 54: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Orientation Estimation from a Cone

Rx

Rx (π/2)

RzRxRz

Edges are symmetric to y axisR Cross section is a circle

Page 55: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Illustration

Page 56: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Metric Rectification of the Ground Plane1 0 0

( / 2) 0 0 1

0 1 0g xH R

Original

Original Rectified

Rectified

Page 57: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Modeling Cones

0Μ ( (0, ,1) , , )Tc vc y r y

Standard view Cones on Ground General Cones

0Μ ( , ,M )R d

Cone Parameters:

2D Control Points for Cones Modeling:

Page 58: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Cones Modeling from the Standard View

Rectify the standard view to the ground plane view by Rx(π/2) The cross section is rectified to a circle The edge line is tangent to the circle The center and radius can be determined for any

point on the edge line

Page 59: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Modeling Cones Standing on the Ground

Ry

Four points Standard view Ground view 3D Mesh

Page 60: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Modeling General Cones

R

Five points Standard View 3D Mesh

Page 61: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Modeling Cylinders

0L ( (0, ,1) , , )Tb tc y r y

0L ( , ,L )R d

Standard View Cylinders on Ground General Cylinders

Cylinder Parameters:

2D Control Points for Cones Modeling:

Page 62: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Modeling Cylinders Standing on the Ground

Ry

Two points Standard view Ground view 3D Mesh

Page 63: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Modeling General Cylinders

R

Four points Standard View 3D Mesh

Page 64: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Screenshots of Real Data Experiments

demo

Page 65: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Outline

Introduction Rectification based on Virtual Sequential Rotation Image Rectification for Stereoscopic Visualization Camera Calibration Stereoscopic View Synthesis from Monocular

Endoscopic Sequences Rapid Cones and Cylinders Modeling from Single

Images Robot Vision Conclusions and Future Work

Page 66: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Exploiting Vertical Lines for Monocular Vision based Mobile Robot Navigation

In man-made environments, vertical lines are omni-present: buildings, boxes, bookshelves, cubicle walls, door frames

Many vision based systems assume the image plane is perpendicular to the ground plane

We proposed methods to rectify an image plane with general pose to be vertical based on vertical lines.

Page 67: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Rectified Images for Ground Plane Detection

ˆ ( / )TH R I Cn d

0 (0,1,0)Tn 0 0( ,0, )TC x z

0

0

cos( ) / sin( )ˆ 0 1 0

sin( ) / cos( )

x d

H

z d

The normalized homography of the ground plane has a special form in the rectified images:

3 DOFs

Page 68: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Results

Special Form

General Form

3 DOFs

8 DOFs

Page 69: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Ground Rectification for Mosaic based SLAM

After rectification, the relationship between any two views directly indicates their relative locations and orientations.

From vertical image plane, it’s easy to get the ground plane image

Page 70: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Results

Page 71: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Vision Based Control

Vanishing line

Occupied

OccupiedTurn angle

876

5…

910

11…

Nearest left Nearest right

Given an rectified imageFind the object to trackIdentify the obstacle or ground planeOutput a turn angle.Adjust the camera to make object always stays at the center of the image.

Movie 1Movie 2ImagesObstacles

Rectified Image

Page 72: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Other Potential Applications

Surveillance/Activity Recognition/ Path Planning

Different object’s size

Same object’s sizeGround is rectifiedRight angles are recoveredSpeed is reflected on the image

Page 73: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Conclusions and Future Works

Novel image rectification schemes are proposed in the context of exploring several practical 3D vision problems

For each of the problem, we designed novel algorithms and nice results are achieved. Moreover, we gain new insights to the problems.

In the future, we should combine different approaches and exploiting more visual cues for 3D vision problems.

Page 74: New Image Rectification Schemes for 3D Vision Based on Sequential Virtual Rotation

Questions?

Thanks!