<p><span>Mobile crowdsensing is a new sensing paradigm that utilizes the intelligence of a crowd of individuals to collect data for mobile purposes by using their portable devices, such as smartphones and wearable devices. Commonly, individuals are incentivized to collect data to fulfill a crowdsens
When Compressive Sensing Meets Mobile Crowdsensing
β Scribed by Linghe Kong, Bowen Wang, Guihai Chen
- Publisher
- Springer Singapore
- Year
- 2019
- Tongue
- English
- Leaves
- 134
- Edition
- 1st ed.
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book provides a comprehensive introduction to applying compressive sensing to improve data quality in the context of mobile crowdsensing. It addresses the following main topics: recovering missing data, efficiently collecting data, preserving user privacy, and detecting false data.
Mobile crowdsensing, as an emerging sensing paradigm, enables the masses to take part in data collection tasks with the aid of powerful mobile devices. However, mobile crowdsensing platforms have yet to be widely adopted in practice, the major concern being the quality of the data collected. There are numerous causes: some locations may generate redundant data, while others may not be covered at all, since the participants are rarely systematically coordinated; privacy is a concern for some people, who donβt wish to share their real-time locations, and therefore some key information may be missing; further, some participants may upload fake data in order to fraudulently gain rewards. To address these problematic aspects, compressive sensing, which works by accurately recovering a sparse signal using very few samples, has proven to offer an effective solution.
β¦ Table of Contents
Front Matter ....Pages i-xii
Introduction (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 1-4
Mobile Crowdsensing (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 5-16
Compressive Sensing (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 17-25
Basic Compressive Sensing for Data Reconstruction (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 27-48
Iterative Compressive Sensing for Fault Detection (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 49-67
Homogeneous Compressive Sensing for Privacy Preservation (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 69-89
Converted Compressive Sensing for Multidimensional Data (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 91-105
Compressive Crowdsensing for Task Allocation (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 107-124
Conclusion (Linghe Kong, Bowen Wang, Guihai Chen)....Pages 125-127
β¦ Subjects
Computer Science; Mobile Computing; Computer Communication Networks; Data Structures, Cryptology and Information Theory; Information Systems and Communication Service
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