Mobile crowd sensing–Taxonomy, applications, challenges, and solutions.

Citation:

Boubiche DE, Imran M, Maqsood A, Shoaib M. Mobile crowd sensing–Taxonomy, applications, challenges, and solutions. Computers in Human Behavior ( Elsevier, Impact factor: 4.306) [Internet]. 2019;101 :352-370.
Mobile crowd sensing–Taxonomy, applications, challenges, and solutions.

Abstract:

Recently, mobile crowd sensing (MCS) is captivating growing attention because of their suitability for enormous range of new types of context-aware applications and services. This is attributed to the fact that modern smartphones are equipped with unprecedented sensing, computing, and communication capabilities that allow them to perform more complex tasks besides their inherent calling features. Despite a number of merits, MCS confronts new challenges due to network dynamics, the huge volume of data, sensing task coordination, and the user privacy problems. In this paper, a comprehensive review of MCS is presented. First, we highlight the distinguishing features and potential advantages of MCS compared to conventional sensor networks. Then, a taxonomy of MCS is devised based on sensing scale, level of user involvement and responsiveness, sampling rate, and underlying network infrastructure. Afterward, we categorize and classify prominent applications of MCS in environmental, infrastructure, social, and behavioral domains. The core architecture of MCS is also described. Finally, we describe the potential advantages, determine and reiterate the open research challenges of MCS and illustrate possible solutions

Notes:

 Elsevier, 2019,  Impact factor: 4.306

Publisher's Version

Last updated on 04/25/2020