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RANSAC Matching: Simultaneous Registration and Segmentation

Shao-Wen Yang, Chieh-Chih Wang and Chun-Hua Chang

2010 IEEE International Conference on Robotics and Automation

Abstract
The iterative closest points (ICP) algorithm is widely used for ego-motion estimation in robotics, but subject
to bias in the presence of outliers. We propose a random sample consensus (RANSAC) based algorithm to simultaneously achieving robust and realtime ego-motion estimation, and multiscale segmentation in environments with rapid changes. Instead of directly sampling on measurements, RANSAC matching investigates initial estimates at the object level of abstraction for systematic sampling and computational efficiency. A soft
segmentation method using a multi-scale representation is exploited to eliminate segmentation errors. By explicitly taking into account the various noise sources degrading the effectiveness of geometric alignment: sensor noise, dynamic objects and data association uncertainty, the uncertainty of a relative pose estimate is calculated under a theoretical investigation of scoring in the RANSAC paradigm. The improved segmentation can
also be used as the basis for higher level scene understanding. The effectiveness of our approach is demonstrated qualitatively and quantitatively through extensive experiments using real data.


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Bibtex
@inproceedings{Yang_icra10,
    author = {Shao-Wen Yang and Chieh-Chih Wang and Chun-Hua Chang},
    title = {RANSAC Matching: Simultaneous Registration and Segmentation
},
    booktitle = {IEEE International Conference on Robotics and Automation (ICRA)
},
    address = {
Anchorage, Alaska},
    month = {May},
    year = {2010},
}


Copyright © Chieh-Chih (Bob) Wang 2010. All right reserved.
Last Updated: March 10, 2010.