Real-time prediction of spatial information such as road-traffic-related information has attracted much attention. Mobile crowdsensing (MCS), in which mobile user devices such as smartphones equipped with sensors work as distributed mobile sensors, is an effective way of collecting sensor data for real-time prediction of spatial information. Since user devices contributing to MCS incur various costs including energy cost and privacy risk, using incentive mechanisms is one approach to compensate for these costs. However, since, in general, the budget for incentive rewarding is limited, rewards should be effectively allocated with considering the contribution of sensor data to the accuracy in real-time prediction of spatial information, which...
Mobile crowdsensing has become a novel and promising paradigm in collecting environmental data. A cr...
Mobile apps are increasingly utilized to gather data for various healthcare aspects. Furthermore, mo...
Sensing cost and data quality are two primary concerns in mobile crowdsensing. In this article, we p...
Predicting real-time spatial information from data collected by the mobile Internet of Things (IoT) ...
A new framework of data assessment and prioritization for real-time prediction of spatial informatio...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
none4noNowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuab...
Piggyback crowdsensing (PCS) is a novel energy- efficient mobile crowdsensing paradigm that reduces ...
Piggyback crowdsensing (PCS) is a novel energy-efficient mobile crowdsensing paradigm that reduces t...
The advances in Internet-of-things (IoT) have fostered the development of new technologies to sense ...
The advances in Internet-of-things (IoT) have fostered the development of new technologies to sense ...
Mobile crowdsensing (MCS) is a novel approach to increase the coverage, lower the costs, and increas...
This paper first defines a novel spatial-temporal coverage metric, k-depth coverage, for mobile crow...
Mobile crowdsensing has become a novel and promising paradigm in collecting environmental data. A cr...
Mobile apps are increasingly utilized to gather data for various healthcare aspects. Furthermore, mo...
Sensing cost and data quality are two primary concerns in mobile crowdsensing. In this article, we p...
Predicting real-time spatial information from data collected by the mobile Internet of Things (IoT) ...
A new framework of data assessment and prioritization for real-time prediction of spatial informatio...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
none4noNowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuab...
Piggyback crowdsensing (PCS) is a novel energy- efficient mobile crowdsensing paradigm that reduces ...
Piggyback crowdsensing (PCS) is a novel energy-efficient mobile crowdsensing paradigm that reduces t...
The advances in Internet-of-things (IoT) have fostered the development of new technologies to sense ...
The advances in Internet-of-things (IoT) have fostered the development of new technologies to sense ...
Mobile crowdsensing (MCS) is a novel approach to increase the coverage, lower the costs, and increas...
This paper first defines a novel spatial-temporal coverage metric, k-depth coverage, for mobile crow...
Mobile crowdsensing has become a novel and promising paradigm in collecting environmental data. A cr...
Mobile apps are increasingly utilized to gather data for various healthcare aspects. Furthermore, mo...
Sensing cost and data quality are two primary concerns in mobile crowdsensing. In this article, we p...