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CrowdPic: A Multi-coverage Picture Collection Framework for Mobile Crowd Photographing

机译:CrowdPic:用于移动人群摄影的多覆盖图片收集框架

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摘要

This paper proposes a generic task-driven data collection framework, named as Crowd Pic, for Mobile Crowd Photographing (MCP) - a widely used technique in crowd sensing. In order to meet diverse MCP application requirements (e.g. Spatio-temporal contexts, single or multiple shooting angles to a sensing target), a multifaceted task model with collection constraints is provided in Crowd Pic. Meanwhile, a pre-selection process is necessary to prevent mobile clients from uploading redundant pictures so as to reduce the overhead traffic and maintain the sensing quality. To address this issue, we developed a pyramid-tree (PTree) model which can select maximum diversified subset from the evolving picture streams based on multiple coverage requirements and constraints defined in MCP tasks by data requesters. Crowd sourcing-based and simulation-based methods are both used to evaluate the effectiveness, efficiency and flexibility of the proposed framework. The experimental results indicate that the PTree method can efficiently assess redundant pictures and effectively select minimal subset with high coverage from the streaming picture according to various coverage needs, and the whole framework is applicable to a wide range of use scenarios.
机译:本文提出了一种通用的任务驱动的数据收集框架,名为“ Crowd Pic”,用于“移动人群摄影”(MCP)-一种在人群感知中广泛使用的技术。为了满足各种MCP应用要求(例如时空背景,与感测目标的单个或多个拍摄角度),Crowd Pic中提供了具有收集约束的多方面任务模型。同时,为了防止移动客户端上传多余的图片,需要进行预选过程,以减少开销,保持传感质量。为了解决这个问题,我们开发了金字塔树(PTree)模型,该模型可以根据数据请求者在MCP任务中定义的多个覆盖范围要求和约束,从不断发展的图片流中选择最大的多样化子集。基于众包和基于仿真的方法均用于评估所提出框架的有效性,效率和灵活性。实验结果表明,PTree方法可以有效地评估冗余图片,并根据各种覆盖需求,从流图片中有效地选择具有高覆盖率的最小子集,整个框架适用于广泛的使用场景。

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