Fast Non-Linear Methods for Dynamic Texture Prediction

@article{Katoch2018FastNM,
  title={Fast Non-Linear Methods for Dynamic Texture Prediction},
  author={Sameeksha Katoch and Pavan K. Turaga and Andreas Spanias and Cihan Tepedelenlioglu},
  journal={2018 25th IEEE International Conference on Image Processing (ICIP)},
  year={2018},
  pages={2107-2111}
}
This paper aims to develop a fast dynamic-texture prediction method, using tools from non-linear dynamical modeling, and fast approaches for approximate regression. We consider dynamic textures to be described by patch-level non-linear processes, thus requiring tools such as delay-embedding to uncover a phase-space where dynamical evolution can be more easily modeled. After mapping the observed time-series from a dynamic texture video to its recovered phase-space, a time-efficient approximate… CONTINUE READING

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