Shift-Invariant Dynamic Texture Recognition

@inproceedings{Woolfe2006ShiftInvariantDT,
  title={Shift-Invariant Dynamic Texture Recognition},
  author={Franco Woolfe and Andrew W. Fitzgibbon},
  booktitle={ECCV},
  year={2006}
}
  • Franco Woolfe, Andrew W. Fitzgibbon
  • Published in ECCV 2006
  • Computer Science
  • We address the problem of recognition of natural motions such as water, smoke and wind-blown vegetation. Such dynamic scenes exhibit characteristic stochastic motions, and we ask whether the scene contents can be recognized using motion information alone. Previous work on this problem has considered only the case where the texture samples have sufficient overlap to allow registration, so that the visual content of the scene is very similar between examples. In this paper we investigate the… CONTINUE READING

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