Sparse people group and crowd detection using spatial point statistics in airborne images

Abdullah H. Ozcan, C. Unsalan, P. Reinartz
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引用次数: 2

Abstract

Crowd monitoring is an important task of security forces. If an emergency occurs during large events, authorities should take urgent measures to prevent causalities. Also understanding crowd dynamics such as tracking crowds or sparse people goups before an emergency occurs is a need. Therefore, crowd detection and analysis is a critical research area. There are several studies for crowd monitoring that use street or indoor cameras which may not be directly used for analyzing large crowds. In this study, we approach the problem using aerial images. We propose two novel methods. In the first method, we use first-order spatial point statistics. It uses the nearest neighbor relations for each person in the image to detect crowd regions. Our second method also uses the first order statistics with an additional sparse people group detection flexibility. We test the proposed methods on two aerial images and provide quantitative test results.
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基于空间点统计的航空图像稀疏人群检测
人群监控是安全部队的一项重要任务。如果在大型活动期间发生紧急情况,当局应采取紧急措施防止人员伤亡。此外,还需要了解人群动态,例如在紧急情况发生之前跟踪人群或稀疏的人群。因此,人群检测与分析是一个重要的研究领域。有几项关于人群监测的研究使用了街道或室内摄像机,这些摄像机可能不能直接用于分析大量人群。在这项研究中,我们使用航空图像来解决这个问题。我们提出了两种新的方法。第一种方法使用一阶空间点统计量。它使用图像中每个人的最近邻关系来检测人群区域。我们的第二种方法也使用一阶统计量,具有额外的稀疏人群检测灵活性。我们在两幅航空图像上对所提出的方法进行了测试,并提供了定量的测试结果。
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