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首页> 外文期刊>Computational Social Systems, IEEE Transactions on >A Spatial Mobile Crowdsourcing Framework for Event Reporting
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A Spatial Mobile Crowdsourcing Framework for Event Reporting

机译:活动报告的空间移动众包框架

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摘要

The widespread use of advanced mobile devices has led to the emergence of a new class of mobile crowdsourcing called spatial mobile crowdsourcing (SMCS). The main feature of SMCS is the presence of spatial tasks that require workers to be physically present at a particular location for task fulfillment. These tasks usually take advantage of the built-in sensors in mobile devices by requesting environment sensing services. Because cameras are becoming the most common way for visual logging techniques and sensing in our daily lives, we propose, in this article, a photo-based SMCS framework for event reporting. The proposed framework allows event report requesters to solicit photos of ongoing events and keep track of any updates. We propose a full architecture in which we solve the SMCS recruitment problem using different fairness strategies in the presence of multiple events and reporters. Then, once submissions are received and before forwarding final responses to event requesters, we proceed with a data processing phase for data quality monitoring. In short, our event reporting platform helps requesters recruit ideal reporters, select highly relevant data from an evolving picture stream, and receive accurate responses. This solution mainly incorporates: 1) a strategic and generic recruitment algorithm for recruiting and scheduling suitable reporters to events; 2) a deep learning model that eliminates false submissions and ensures photo’s credibility; and 3) an A-tree shape data structure model for clustering streaming pictures to reduce information redundancy and provide maximum event coverage. Experiment results investigate the performances of the proposed recruitment approach and show that our algorithm outperforms two other benchmarking approaches. Also, we conduct simulations to evaluate the strategies of the proposed recruitment algorithm, given different fairness levels among events. Data quality simulation results show effectiveness in reducing false submissions and delivering high-quality responses. Finally, framework implementation for real-world applications is provided.
机译:高级移动设备的广泛使用导致了一种名为空间移动众包(SMC)的新一类移动众包的出现。 SMC的主要特征是存在空间任务,这些任务需要工人在特定地点处于任务履行的特定位置。这些任务通常通过请求环境感测服务来利用移动设备中的内置传感器。由于相机正在成为我们日常生活中的视觉测井技术和感知的最常见方式,我们提出了一篇关于事件报告的基于照片的SMCS框架。拟议的框架允许事件报告请求者征求持续的事件的照片并跟踪任何更新。我们提出了一种完整的架构,在此,我们在存在多种事件和记者的存在下使用不同的公平策略来解决SMC招聘问题。然后,一旦收到提交并在转发对事件请求者的最终响应之前,我们会使用数据处理阶段进行数据质量监控。简而言之,我们的事件报告平台有助于请求者招聘理想记者,从不断发展的图片流中选择高度相关的数据,并获得准确的响应。该解决方案主要包括:1)一种战略性和通用招聘算法,用于招募和安排适合事件的适合记者; 2)深入学习模型,消除了虚假提交并确保照片的可信度; 3)一种用于聚类流图像的A树形状数据结构模型,以减少信息冗余并提供最大的事件覆盖范围。实验结果调查了提出的招聘方法的性能,并表明我们的算法优于另外两种基准测试方法。此外,我们进行模拟以评估提出的招聘算法的策略,给予事件中不同的公平程度。数据质量仿真结果表明,减少虚假提交和提供高质量响应的有效性。最后,提供了真实应用程序的框架实现。

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