From Compression of Wearable-based Data to Effortless Indoor Positoning

  1. Klus, Lucie
Dirigida por:
  1. Carlos Granell Canut Director/a

Universidad de defensa: Universitat Jaume I

Fecha de defensa: 27 de abril de 2023

Tribunal:
  1. Christos Laoudias Presidente/a
  2. Joaquín Torres Sospedra Secretario
  3. Tobias Feigl Vocal

Tipo: Tesis

Teseo: 808173 DIALNET lock_openTDX editor

Resumen

The dissertation focuses on boosting the energy efficiency of IoT and wearable devices by implementing lossy compression techniques onto sensor-based time-series data and into indoor localization paradigms. The thesis deals with lossy compression mechanisms that can be implemented for energy-efficient, delay-sensitive wearable data gathering, transfer, and storage. The novel DLTC compression method ensures optimal compression ratio and reconstruction error trade-off, with minimum complexity and delay. In the scope of indoor positioning, the proposed bit-level, feature-wise, and sample-wise reduction of the radio map support accurate positioning while saving resources in data storage and transfer. The work implements a multi-dimensional compression of the radio map to boost the performance efficiency of the positioning system and proposes a cascade model to compensate for k-NN's drawback of computationally expensive prediction on voluminous datasets.