向着用全向摄像机监控人类活动的方向发展

Xilin Chen, Jie Yang
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引用次数: 21

摘要

我们提出了一种利用全向相机监测室内环境中人类活动的方法。稳健地跟踪人是建模和识别人类活动的先决条件。安装在天花板上的全向相机不太容易出现遮挡问题。我们使用马尔可夫随机场(MRF)来表示背景和前景,并根据环境变化有效地调整模型。我们采用可变形模型来调整前景模型,以便在全向相机的视图模式内最佳地匹配不同位置的物体。为了监测人类活动,我们将人的位置表示为空间点,并在时空窗口内分析运动轨迹。该方法提供了一种无需探索身份即可有效监控高层人员活动的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards monitoring human activities using an omnidirectional camera
We propose an approach for monitoring human activities in an indoor environment using an omnidirectional camera. Robustly tracking people is prerequisite for modeling and recognizing human activities. An omnidirectional camera mounted on the ceiling is less prone to problems of occlusion. We use the Markov Random Field (MRF) to present both background and foreground, and adapt models effectively against environment changes. We employ a deformable model to adapt the foreground models to optimally match objects in different position within a pattern of view of the omnidirectional camera. In order to monitor human activity, we represent positions of people as spatial points and analyze moving trajectories within a time-spatial window. The method provides an efficient way to monitoring high-level human activities without exploring identities.
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