Graph Signal Processing in Applications to Sensor Networks, Smart Grids, and Smart Cities

@article{Jaboski2017GraphSP,
  title={Graph Signal Processing in Applications to Sensor Networks, Smart Grids, and Smart Cities},
  author={Ireneusz Jabłoński},
  journal={IEEE Sensors Journal},
  year={2017},
  volume={17},
  pages={7659-7666}
}
This paper initiates a discussion on the application of the graph signal processing to exploration of complex and heterogeneous data and systems, and especially for the case of environmental monitoring in smart habitat of city, country, and continent. This emerging approach relates to the objects, which can be represented by a networked structure, but enables also the reconstruction of network-like associations from data when this kind of structured organization is not apparent. In this paper… CONTINUE READING

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