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Robust Mobile Crowd Sensing: When Deep Learning Meets Edge Computing

机译:强大的移动人群感应:深度学习与边缘计算相遇时

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摘要

The emergence of MCS technologies provides a cost-efficient solution to accommodate large-scale sensing tasks. However, despite the potential benefits of MCS, there are several critical issues that remain to be solved, such as lack of incentive-compatible mechanisms for recruiting participants, lack of data validation, and high traffic load and latency. This motivates us to develop robust mobile crowd sensing (RMCS), a framework that integrates deep learning based data validation and edge computing based local processing. First, we present a comprehensive state-of-the-art literature review. Then, the conceptual design architecture of RMCS and practical implementations are described in detail. Next, a case study of smart transportation is provided to demonstrate the feasibility of the proposed RMCS framework. Finally, we identify several open issues and conclude the article.
机译:MCS技术的出现为满足大规模传感任务提供了一种经济高效的解决方案。但是,尽管MCS具有潜在的好处,但仍有一些关键问题有待解决,例如缺乏激励兼容的招募参与者机制,缺乏数据验证以及高流量负载和延迟。这激励我们开发强大的移动人群感知(RMCS),该框架集成了基于深度学习的数据验证和基于边缘计算的本地处理。首先,我们介绍全面的最新文献综述。然后,详细描述了RMCS的概念设计体系结构和实际实现。接下来,提供了一个智能交通案例研究,以证明提出的RMCS框架的可行性。最后,我们确定了几个未解决的问题并总结了本文。

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