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Key Frame Selection Algorithms for Automatic Generation of Panoramic Images from Crowdsourced Geo-tagged Videos

机译:来自众群地理标记视频的全景图像的关键帧选择算法

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Currently, an increasing number of user-generated videos (UGVs) are being collected - a trend that is driven by the ubiquitous availability of smartphones. Additionally, it has become easy to continuously acquire and fuse various sensor data (e.g., geospatial metadata) together with video to create sensor-rich mobile videos. As a result, large repositories of media contents can be automatically geo-tagged at the fine granularity of frames during video recording. Thus, UGVs have great potential to be utilized in various geographic information system (GIS) applications, for example, as source media to automatically generate panoramic images. However, large amounts of crowdsourced media data are currently underutilized because it is very challenging to manage, browse and explore UGVs. We propose and demonstrate the use of geo-tagged, crowdsourced mobile videos by automatically generating panoramic images from UGVs for web-based geographic information systems.The proposed algorithms leverage data fusion, crowdsourcing and recent advances inmedia processing to create large scale panoramic environments very quickly, and possibly even on-demand. Our experimental results demonstrate that by using geospatial metadata the proposed algorithms save a significant amount of time in generating panoramas while not sacrificing image quality.
机译:目前,正在收集越来越多的用户生成的视频(UGV) - 这是由智能手机无处不在的可用性驱动的趋势。此外,它已经容易地连续地获取和融合各种传感器数据(例如,地理空间元数据)以及视频以创建富有的传感器的移动视频。结果,在视频录制期间,可以在帧的细粒度上自动地地地理标记媒体内容的大存储库。因此,UGV在各种地理信息系统(GIS)应用中具有很大的潜力,例如,作为自动生成全景图像的源媒体。但是,大量的众群媒体数据目前未充分利用,因为管理,浏览和探索UGV非常具有挑战性。我们提出并展示了通过自动生成来自基于Web的地理信息系统的UGV的全景图像来使用地理标记的众包移动视频。建议的算法利用数据融合,众群和最近的进步,inmedia处理非常快速地创建大规模的全景环境,也可能是点待。我们的实验结果表明,通过使用地理空间元数据,所提出的算法在不牺牲图像质量的同时节省了大量时间。

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