Signal Processing.

@article{Laguna2002SignalP,
  title={Signal Processing.},
  author={Pablo Laguna},
  journal={Yearbook of medical informatics},
  year={2002},
  volume={1},
  pages={
          427-430
        }
}
  • P. Laguna
  • Published 2002
  • Medicine
  • Yearbook of medical informatics
Signal processing is generally referred to as the technique to analyze time domain series acquired from a physical phenomenon, representing some physical time-varying magnitude. Signals can be of different nature: onedimensional continuous signals (e.g. bioelectric signals, speech, etc); twodimensional signals (images, etc); threedimensional signals (video, etc). However, when we use the term signal we will tacitly refer here (and in many references) to one-dimensional signals. One-dimensional… Expand

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