Title :
Crowdsensing in Urban Areas for City-Scale Mass Gathering Management: Geofencing and Activity Recognition
Author :
Cardone, Giuseppe ; Cirri, Andrea ; Corradi, Antonio ; Foschini, Luca ; Ianniello, Raffaele ; Montanari, Rebecca
Author_Institution :
Dept. of Comput. Sci. & Eng., Univ. of Bologna, Bologna, Italy
Abstract :
The widespread availability of smartphones today equipped with several physical and virtual sensors allows to directly collect various information about surrounding physical and logical context for different purposes that range from detecting user´s current physical activity and also user presence in a designated area, often referred to as geofencing, to determining current social pulse of individuals and entire communities. Mobile crowdsensing seems a promising solution for enabling the design/development and deployment of a wide range of advanced applications in various fields. In particular, public safety, transportation, and energy monitoring and management in urban environments can benefit from mobile crowdsensing in terms of advanced provisioned applications as well as savings of investments in the urban sensing infrastructure. However, enabling those advanced smart urban applications requires complex signal processing, machine learning, and resource management algorithms that are often beyond the skills of many mobile app developers. This paper describes the pivotal relevance of these facilities for mobile crowdsensing applications and presents our open-source solution, called Mobile Sensing Technology (MoST), for activity detection and geofencing, comparing it with the reference implementations provided by Google as part of the Google Play Services library. Experimental results within the testbed framework of a crowd-management application scenario validate MoST design guidelines and demonstrate the general-purpose, unintrusive, and power-efficient characteristics of MoST sensing capabilities.
Keywords :
geographic information systems; image recognition; learning (artificial intelligence); mobile computing; public domain software; Google play services library; MoST design guidelines; MoST sensing capability; activity detection; activity recognition; advanced smart urban applications; city-scale mass gathering management; complex signal processing; crowd-management application scenario; energy management; energy monitoring; geofencing; machine learning; mobile application developers; mobile crowdsensing; mobile sensing technology; open-source solution; power-efficient characteristics; public safety; resource management algorithms; sensing infrastructure; smart phones; social pulse; transportation; urban areas; urban environments; user current physical activity detection; user presence; Accelerometers; Geology; Google; Libraries; Mobile communication; Sensors; Smart phones; Mobile computing; activity recognition; geofencing; geographic information systems; machine learning; mobile crowdsensing (MCS);
Journal_Title :
Sensors Journal, IEEE
DOI :
10.1109/JSEN.2014.2344023