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首页> 外文期刊>Geoinformatica: An international journal of advances of computer science for geographic >Efficient indexing and retrieval of large-scale geo-tagged video databases
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Efficient indexing and retrieval of large-scale geo-tagged video databases

机译:大型地理标记视频数据库的高效索引和检索

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摘要

We are witnessing a significant growth in the number of smartphone users and advances in phone hardware and sensor technology. In conjunction with the popularity of video applications such as YouTube, an unprecedented number of user-generated videos (UGVs) are being generated and consumed by the public, which leads to a Big Data challenge in social media. In a very large video repository, it is difficult to index and search videos in their unstructured form. However, due to recent development, videos can be geo-tagged (e.g., locations from GPS receiver and viewing directions from digital compass) at the acquisition time, which can provide potential for efficient management of video data. Ideally, each video frame can be tagged by the spatial extent of its coverage area, termed Field-Of-View (FOV). This effectively converts a challenging video management problem into a spatial database problem. This paper attacks the challenges of large-scale video data management using spatial indexing and querying of FOVs, especially maximally harnessing the geographical properties of FOVs. Since FOVs are shaped similar to slices of pie and contain both location and orientation information, conventional spatial indexes, such as R-tree, cannot index them efficiently. The distribution of UGVs' locations is non-uniform (e.g., more FOVs in popular locations). Consequently, even multilevel grid-based indexes, which can handle both location and orientation, have limitations in managing the skewed distribution. Additionally, since UGVs are usually captured in a casual way with diverse setups and movements, no a priori assumption can be made to condense them in an index structure. To overcome the challenges, we propose a class of new R-tree-based index structures that effectively harness FOVs' camera locations, orientations and view-distances, in tandem, for both filtering and optimization. We also present novel search strategies and algorithms for efficient range and directional queries on our indexes. Our experiments using both real-world and large synthetic video datasets (over 30 years' worth of videos) demonstrate the scalability and efficiency of our proposed indexes and search algorithms.
机译:我们见证了智能手机用户数量的显着增长,以及电话硬件和传感器技术的进步。伴随着YouTube等视频应用程序的普及,公众正在生成和消费前所未有数量的用户生成视频(UGV),这在社交媒体中引发了大数据挑战。在非常大的视频存储库中,很难索引和搜索非结构化形式的视频。但是,由于最近的发展,可以在采集时间对视频进行地理标记(例如,来自GPS接收器的位置和来自数字罗盘的查看方向),这可以为有效管理视频数据提供潜力。理想情况下,每个视频帧都可以通过其覆盖区域的空间范围(称为视场(FOV))进行标记。这有效地将具有挑战性的视频管理问题转换为空间数据库问题。本文使用FOV的空间索引和查询来攻击大规模视频数据管理的挑战,尤其是最大程度地利用FOV的地理属性。由于FOV的形状类似于馅饼切片,并且包含位置和方向信息,因此常规的空间索引(例如R树)无法对其进行有效索引。 UGV的位置分布不均匀(例如,受欢迎位置中的FOV数量更多)。因此,即使是可以同时处理位置和方向的基于多级网格的索引,在管理偏斜分布时也有局限性。另外,由于通常以各种设置和移动方式随意捕获UGV,因此无法做出先验假设以将其压缩为索引结构。为了克服这些挑战,我们提出了一类基于R树的新索引结构,该结构可有效地同时利用FOV的摄像机位置,方向和视图距离进行过滤和优化。我们还提出了新颖的搜索策略和算法,可对索引进行有效的范围和方向查询。我们使用真实世界和大型合成视频数据集(价值超过30年的视频)进行的实验证明了我们提出的索引和搜索算法的可扩展性和效率。

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