Izenburua
Incorporation of Synthetic Data Generation Techniques within a Controlled Data Processing Workflow in the Health and Wellbeing DomainEgilea (beste erakunde batekoa)
Beste instituzio
VicomtechAristotle University of Thessaloniki
European Network of Living Labs (ENoLL)
Bertsioa
Bertsio argitaratua
Eskubideak
© 2022 by the authors. Licensee MDPISarbidea
Sarbide irekiaArgitaratzailearen bertsioa
https://doi.org/10.3390/electronics11050812Non argitaratua
Electronics Vol. 11. N. 5. N. artículo 812, 2022Argitaratzailea
MDPIGako-hitzak
synthetic data generationLiving Lab
controlled data processing
machine learning
Laburpena
To date, the use of synthetic data generation techniques in the health and wellbeing domain has been mainly limited to research activities. Although several open source and commercial packages have be ... [+]
To date, the use of synthetic data generation techniques in the health and wellbeing domain has been mainly limited to research activities. Although several open source and commercial packages have been released, they have been oriented to generating synthetic data as a standalone data reparation process and not integrated into a broader analysis or experiment testing workflow. In this context, the VITALISE project is working to harmonize Living Lab research and data capture protocols and to provide controlled processing access to captured data to industrial and scientific communities. In this paper, we present the initial design and implementation of our synthetic data generation approach in the context of VITALISE Living Lab controlled data processing workflow, together with identified challenges and future developments. By uploading data captured from Living Labs, generating synthetic data from them, developing analysis locally with synthetic data, and then executing them remotely with real data, the utility of the proposed workflow has been validated. Results have shown that the presented workflow helps accelerate research on artificial intelligence, ensuring compliance with data protection laws. The presented approach has demonstrated how the adoption of state-of-the-art synthetic data generation techniques can be applied for real-world applications. [-]
Sponsorship
Comisión EuropeaProjectu ID
info:eu-repo/grantAgreement/EC/H2020/101007990/EU/VIrtual healTh And weLlbeing Living Lab InftraStructurE/VITALISEBildumak
Item honek honako baimen-fitxategi hauek dauzka asoziatuta: