When crowdsourcing meets mobile sensing: a social network perspective

@article{Chen2015WhenCM,
  title={When crowdsourcing meets mobile sensing: a social network perspective},
  author={Pin-Yu Chen and Shin-Ming Cheng and Pai-Shun Ting and Chia-Wei Lien and Fu-Jen Chu},
  journal={IEEE Communications Magazine},
  year={2015},
  volume={53},
  pages={157-163}
}
  • Pin-Yu Chen, Shin-Ming Cheng, +2 authors Fu-Jen Chu
  • Published in IEEE Communications Magazine 2015
  • Computer Science, Mathematics
  • Mobile sensing is an emerging technology that utilizes agent-participatory data for decision making or state estimation, including multimedia applications. This article investigates the structure of mobile sensing schemes and introduces crowdsourcing methods for mobile sensing. Inspired by social networks, one can establish trust among participatory agents to leverage the wisdom of crowds for mobile sensing. A prototype of social-network-inspired mobile multimedia and sensing application is… CONTINUE READING

    Create an AI-powered research feed to stay up to date with new papers like this posted to ArXiv

    Figures, Tables, and Topics from this paper.

    Citations

    Publications citing this paper.
    SHOWING 1-10 OF 20 CITATIONS

    Contract-Based Incentive Mechanism for Mobile Crowdsourcing Networks

    VIEW 4 EXCERPTS
    CITES BACKGROUND
    HIGHLY INFLUENCED

    Trust Evaluation Mechanism for User Recruitment in Mobile Crowd-Sensing in the Internet of Things

    VIEW 1 EXCERPT
    CITES BACKGROUND

    Walrasian Equilibrium-Based Incentive Scheme for Mobile Crowdsourcing Fingerprint Localization

    VIEW 2 EXCERPTS
    CITES METHODS & BACKGROUND

    Using Deep Data Augmentation Training to Address Software and Hardware Heterogeneities in Wearable and Smartphone Sensing Devices

    VIEW 1 EXCERPT
    CITES BACKGROUND

    Geo-Conquesting Based on Graph Analysis for Crowdsourced Metatrails from Mobile Sensing

    VIEW 1 EXCERPT
    CITES BACKGROUND

    References

    Publications referenced by this paper.
    SHOWING 1-10 OF 13 REFERENCES

    Supervised Collective Classification for Crowdsourcing

    VIEW 1 EXCERPT

    User privacy and data trustworthiness in mobile crowd sensing

    VIEW 3 EXCERPTS

    Privacypreserving profile matching for proximity-based mobile social network ing

    • R. Zhang, J. Zhang, Y. Zhang, J. Sun, G. Yan
    • IEEE J. Sel. Areas Commun., vol. 31, no. 9, pp. 656–668, Sept. 2013.
    • 2013
    VIEW 2 EXCERPTS

    Learning From Crowds

    VIEW 1 EXCERPT