Mode Decomposition Evolution Equations

@article{Wang2012ModeDE,
  title={Mode Decomposition Evolution Equations},
  author={Yang Wang and Guowei Wei and Siyang Yang},
  journal={Journal of Scientific Computing},
  year={2012},
  volume={50},
  pages={495-518}
}
Partial differential equation (PDE) based methods have become some of the most powerful tools for exploring the fundamental problems in signal processing, image processing, computer vision, machine vision and artificial intelligence in the past two decades. The advantages of PDE based approaches are that they can be made fully automatic, robust for the analysis of images, videos and high dimensional data. A fundamental question is whether one can use PDEs to perform all the basic tasks in the… 
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