Optimal Range Segmentation Parameters through Genetic Algorithms

@inproceedings{Cinque2000OptimalRS,
  title={Optimal Range Segmentation Parameters through Genetic Algorithms},
  author={Luigi Cinque and Stefano Levialdi and Gianluca Pignalberi and Rita Cucchiara and Stefano Martinz},
  booktitle={ICPR},
  year={2000}
}
A wide number of algorithms for surjtiace segmentation in range images have been recently proposed characterized by different approaches (edge filling, region growing, . . . ), different su$ace types (either for planar or curved suifaces) and different parameters involved. Optimization of the parameter set is a particularly critical task since the range of parameter variability is often quite large: parameter selection depends on surface type, sensors and the required speed which strongly… CONTINUE READING

Citations

Publications citing this paper.

References

Publications referenced by this paper.
SHOWING 1-7 OF 7 REFERENCES

Constraint Propagation and Value Acquisition : why we should do it Interactively

  • P. Mello E. Lamma, M. Milano, M. Ga-vanelli R. Cucchiara
  • Computer Vision and Image Understanding
  • 1999

An Experimental Comparison of Range Image Segmentation Algorithms

  • G. Jean-Baptiste A. Hoover, X. Jiang, +6 authors R. B. Fisher
  • IEEE Transactions on Pattern Analysis and Machine…
  • 1987

Similar Papers

Loading similar papers…