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Remote Cloud or Local Crowd: Communicating and Sharing the Crowdsensing Data

机译:远程云或本地人群:交流和共享人群数据

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With an increase in the number of mobile applications, the development of mobile crowdsensing systems has recently attracted a significant attention in both academic researchers and industries. In mobile crowdsensing system, the remote cloud (or back-end server) harvests all the crowdsensing data from the mobile devices, and the crowdsensing data can be uploaded immediately via 3G/4G. To reduce the cost and energy consumption, many academic researchers and industries investigate the way of mobile data offloading. Due to the sparse distribution of the WiFi APs, the crowdsensing data is often delayed to offloading. In this paper, compared with offloading data via WiFi APs, we investigate the communication and sharing of crowdsensing data by vehicles near the event (such as a pathole on the road), termed as a local crowd. The crowd-based approach has a lower delay than the offloading-based approach, by considering the quality of truth discovery. We define an utility function related to the crowdsensing data shared by the local crowd, in order to quantify the trade-off between the quality of the truth discovery and the user satisfaction. Our extensional simulations verify the effectiveness of our proposed schemes.
机译:随着移动应用程序数量的增加,移动人群感知系统的开发最近引起了学术研究人员和行业的极大关注。在移动人群感应系统中,远程云(或后端服务器)从移动设备中收集所有人群感应数据,并且可以通过3G / 4G立即上传人群感应数据。为了降低成本和能耗,许多学术研究人员和行业都在研究移动数据卸载的方式。由于WiFi AP的分布稀疏,因此众包数据通常会延迟卸载。在本文中,与通过WiFi AP卸载数据相比,我们研究了事件附近车辆(例如路上的小动物)被称为本地人群的通信和共享感知数据的方式。通过考虑真相发现的质量,基于人群的方法比基于卸载的方法具有更低的延迟。我们定义了与本地人群共享的人群感知数据相关的效用函数,以便量化真相发现质量和用户满意度之间的权衡。我们的扩展仿真验证了我们提出的方案的有效性。

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