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Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng
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Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Dec 19, 2015

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Page 1: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Model Independent Visual Servoing

CMPUT 610 Literature Reading Presentation

Zhen Deng

Page 2: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Introduction

Summaries and Comparisons of Traditional Visual Servoing and Model independent Visual Servoing emphasizing on the latter.

Works are mostly from Jenelle A. Piepmeier’s thesis and Alexandra Hauck’s thesis

Page 3: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Visual Servo

Visual servo control has the potential to provide a low-cost, low-maintenance automation solution for unstructured industries and environments.

Robotics has thrived in ordered domains, it has found challenges in environments that are not well defined.

Page 4: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Traditional Visual Servoing

Precise knowledge of the robot kinematics, the camera model, or the geometric relationship between the camera and the robot systems is assumed.

Need to know the exact position of the end-effector and the target in the Cartesian Space.

Require lots of calculation.

Page 5: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Rigid Body Links

Page 6: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Forward Kinematics

The Denavit-Hartenberg Notation:

i-1 T i = Rotz(ransz(d) Rotx(Trans(a)

Transformation 0 T e=

0 T 1 1 T 2

2 T 3 … n-1 T n n T e

Page 7: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Jacobian by Differential

Velocity variables can transformed between joint space and Euclidean space using Jacobian matrices

x = J * J \ x Jij = ixj

Page 8: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Calibrated Camera Model

Page 9: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Model Independent Visual Servoing

An image-based Visual Servoing method. Could be further classified as dynamic look-

and-move according to the classification scheme developed by Sanderson and Weiss.

Estimate the Jacobian on-line and does not require calibrated models of either of the camera configuration or the robot kinematics.

Page 10: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

History

Martin Jagersand formulates the visual Servoing problem as a nonlinear least squares problem solved by a quasi-Newton method using Broyden Jacobian estimation.

Base on Martin’s work, Jenelle P adds a frame to solve the problem of grasping a moving target.

me ? …

Page 11: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Reaching a Stationary Target

Residual error f() = y(y*. Goal: minimize f() f = fk - fk-1

Jk = Jk-1 + (f-Jk-1 T/ T k+1kJ-1

kfk

Page 12: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Reaching a Fixed Object

Page 13: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Tracking the moving object

Interaction with a moving object, e.g. catching or hitting it, is perhaps the most difficult task for a hand-eye system.

Most successful systems presented in paper uses precisely calibrated, stationary stereo camera systems and image-processing hardware together with a simplified visual environment.

Page 14: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Peter K. Allen’s Work

Allen et al. Developed a system that could grasp a toy train moving in a plain. The train’s position is estimated from(hardware-supported) measurements of optic flow with a stationary,calibrated stereo system.

Using a non-linear filtering and prediction, the robot tracks the train and finally grasps it.

Page 15: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

“Ball player”

Andersson’s ping-pong player is one of the earliest “ball playing” robot.

Nakai et al developed a robotic volleyball player.

Page 16: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Jenelle’s modification to Broyden

Residual error f(,t) = y(y*(t). Goal: minimize f(,t) f = fk - fk-1

Jk = Jk-1 + (f - Jk-1 y*(t)ttT/ T

k+1kJkTJk)-1 Jk

T

(fky*(t)tt

Page 17: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Convergence

The residual error converges as the iterations increasing.

While the static method does not. The mathematics proof of this result could

be found in Jenelle’s paper.

Page 18: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Experiments with 1 DOF system

Page 19: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Results

Page 20: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

6 DOF experiments

Page 21: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Future work ?

Analysis between the two distinct ways of computing the Jacobian Matrix.

Solving the tracking problem without the knowledge of target motion.

More robust … ?

Page 22: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Literature Links

http://mime1.gtri.gatech.edu/imb/projects/mivs/vsweb2.html

A Dynamic Quasi-Newton Method for Uncalibrated Visual Servoing by Jenelle al

Automated Tracking and Grasping of a Moving Object with a Robotic Hand-Eye System. By Peter K. Allen

Page 23: Model Independent Visual Servoing CMPUT 610 Literature Reading Presentation Zhen Deng.

Summary

Model Independent approach is proved to be more robust and more efficient.