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Robust Jacobian Estimation for Uncalibrated Visual Servoing

Full Text: shademan2010a.pdf PDF

This paper addresses robust estimation of the uncalibrated visual-motor Jacobian for an image-based visual servoing (IBVS) system. The proposed method does not require knowledge of model or system parameters and is robust to outliers caused by various visual tracking errors, such as occlusion or mis-tracking. Previous uncalibrated methods are not robust to outliers and assume that the visual-motor data belong to the underlying model. In unstructured environments, this assumption may not hold. Outliers to the visual-motor model may deteriorate the Jacobian, which can make the system unstable or drive the arm in the wrong direction. We propose to apply a statistically robust M-estimator to reject the outliers. We compare the quality of the robust Jacobian estimation with the least squares-based estimation. The effect of outliers on the estimation quality is studied through MATLAB simulations and eye-in-hand visual servoing experiments using a WAM arm. Experimental results show that the Jacobian estimated by robust M-estimation is robust when up to 40% of the visual-motor data are outliers.

Citation

A. Shademan, A. Farahmand, M. Jagersand. "Robust Jacobian Estimation for Uncalibrated Visual Servoing". IEEE International Conference on Robotics and Automation (ICRA), pp 5564-5569, May 2010.

Keywords: Robotics, Vision, Visual Servoing, Robust Statistics, M-Estimation
Category: In Conference
Related Publication(s): Global Visual-Motor Estimation for Uncalibrated Visual Servoing
  Three-View Uncalibrated Visual Servoing

BibTeX

@incollection{Shademan+al:ICRA10,
  author = {Azad Shademan and A.M. Farahmand and Martin Jagersand},
  title = {Robust Jacobian Estimation for Uncalibrated Visual Servoing},
  Pages = {5564-5569},
  booktitle = {IEEE International Conference on Robotics and Automation (ICRA)},
  year = 2010,
}

Last Updated: January 05, 2012
Submitted by Azad Shademan

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