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SnapTask: Towards Efficient Visual Crowdsourcing for Indoor Mapping

机译:SnapTask:实现室内地图的高效视觉众包

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Visual crowdsourcing (VCS) offers an inexpensive method to collect visual data for implementing tasks, such as 3D mapping and place detection, thanks to the prevalence of smartphone cameras. However, without proper guidance, participants may not always collect data from desired locations with a required Quality-of-Information (QoI). This often causes either a lack of data in certain areas, or extra overheads for processing unnecessary redundancy. In this work, we propose SnapTask, a participatory VCS system that aims at creating complete indoor maps by guiding participants to efficiently collect visual data of high QoI. It applies Structure-from-Motion (SfM) techniques to reconstruct 3D models of indoor environments, which are then converted into indoor maps. To increase coverage with minimal redundancy, SnapTask determines locations for the next data collection tasks by analyzing the coverage of the generated 3D model and the camera views of the collected images. In addition, it overcomes the limitations of SfM techniques by utilizing crowdsourced annotations to reconstruct featureless surfaces (e.g. glass walls) in the 3D model. According to a field test in a library, the indoor map generated by SnapTask successfully reconstructs 100% of the library walls and 98.12% of objects and traversal areas within the library. With the same amount of input data our design of guided data collection increases the map coverage by 20.72% and 34.45%, respectively, compared with unguided participatory and opportunistic VCS.
机译:视觉众包(VCS)提供了一种廉价的方法来收集用于执行任务的视觉数据,例如3D映射和位置检测,这要归功于智能手机摄像头的普及。但是,在没有适当指导的情况下,参与者可能无法始终从具有所需信息质量(QoI)的所需位置收集数据。这通常会导致某些区域缺少数据,或者会产生额外的开销来处理不必要的冗余。在这项工作中,我们提出了SnapTask,这是一种参与式VCS系统,旨在通过指导参与者有效收集高QoI的可视数据来创建完整的室内地图。它应用动态结构(SfM)技术来重建室内环境的3D模型,然后将其转换为室内地图。为了以最小的冗余度增加覆盖范围,SnapTask通过分析生成的3D模型的覆盖范围和所收集图像的相机视图来确定下一个数据收集任务的位置。此外,它通过利用众包注释在3D模型中重建无特征的表面(例如玻璃墙)来克服SfM技术的局限性。根据图书馆的现场测试,由SnapTask生成的室内地图成功地重建了100%的图书馆墙壁以及98.12%的图书馆对象和遍历区域。在输入数据量相同的情况下,与未引导的参与式和机会性VCS相比,我们的引导式数据收集设计分别将地图覆盖率提高了20.72%和34.45%。

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