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A Dataset for Persistent Multi-target Multi-camera Tracking in RGB-D

机译:RGB-D中的持久多目标多摄像机跟踪数据集

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Video surveillance systems are now widely deployed to improve our lives by enhancing safety, security, health monitoring and business intelligence. This has motivated extensive research into automated video analysis. Nevertheless, there is a gap between the focus of contemporary research, and the needs of end users of video surveillance systems. Many existing benchmarks and methodologies focus on narrowly defined problems in detection, tracking, re-identification or recognition. In contrast, end users face higher-level problems such as long-term monitoring of identities in order to build a picture of a person's activity across the course of a day, producing usage statistics of a particular area of space, and that these capabilities should be robust to challenges such as change of clothing. To achieve this effectively requires less widely studied capabilities such as spatio-temporal reasoning about people identities and locations within a space partially observed by multiple cameras over an extended time period. To bridge this gap between research and required capabilities, we propose a new dataset LIMA that encompasses the challenges of monitoring a typical home / office environment. LIMA contains 4.5 hours of RGB-D video from three cameras monitoring a four room house. To reflect the challenges of a realistic practical application, the dataset includes clothes changes and visitors to ensure the global reasoning is a realistic open-set problem. In addition to raw data, we provide identity annotation for benchmarking, and tracking results from a contemporary RGB-D tracker - thus allowing focus on the higher level monitoring problems.
机译:视频监控系统现在广泛地部署以通过提高安全,安全,健康监测和商业智能来改善我们的生活。这具有激烈的自动视频分析研究。尽管如此,当代研究的焦点之间存在差距,以及视频监控系统的最终用户的需求。许多现有的基准和方法专注于检测,跟踪,重新识别或识别中的狭隘地定义问题。相比之下,最终用户面临更高级别的问题,例如对身份的长期监控,以便在一天的过程中建立一个人的活动的图片,产生特定空间区域的使用统计,以及这些能力应该坚强地挑战衣服的挑战。为了实现这种有效地需要较少地研究的能力,例如在延长的时间段内由多个摄像机部分观察的空间内的空间内的时空标识和位置。为了弥合研究和所需能力之间的这种差距,我们提出了一个新的数据集利马,包括监控典型家庭/办公环境的挑战。 Lima包含4.5小时的RGB-D从三个摄影机的RGB-D视频监控四个房间。为了反映逼真的实际应用的挑战,数据集包括衣服变化和访客,以确保全球推理是一个现实的开放问题。除了原始数据外,我们还提供用于基准测试的标识注释,以及跟踪当代RGB-D跟踪器的结果 - 从而允许专注于更高级别的监测问题。

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