Hough Transform and 3D SURF for Robust Three Dimensional Classification

@inproceedings{Knopp2010HoughTA,
  title={Hough Transform and 3D SURF for Robust Three Dimensional Classification},
  author={Jan Knopp and Mukta Prasad and Geert Willems and Radu Timofte and Luc Van Gool},
  booktitle={ECCV},
  year={2010}
}
Most methods for the recognition of shape classes from 3D datasets focus on classifying clean, often manually generated models. However, 3D shapes obtained through acquisition techniques such as Structure-from-Motion or LIDAR scanning are noisy, clutter and holes. In that case global shape features--still dominating the 3D shape class recognition literature--are less appropriate. Inspired by 2D methods, recently researchers have started to work with local features. In keeping with this strand… CONTINUE READING
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