基于光流运动模型的人携物检测

T. Senst, Rubén Heras Evangelio, T. Sikora
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引用次数: 35

摘要

检测携带物体的人是监测人与物体之间相互作用的第一步,这是一个常见的问题。最近的工作依赖于精确的前景目标分割,这在视频监控序列中往往难以实现,因为前景目标与场景背景的对比度不好,光线条件突变和相机振动小。为了克服这些困难,我们提出了一种基于运动统计的方法。因此,我们使用高斯混合运动模型(GMMM),并在该模型的基础上定义了一种新的独立于速度和方向的运动描述符,以检测携带的行李作为不适合普通步行者运动描述模型的区域。该系统在公共数据集PETS2006和更具挑战性的数据集(包括光照突变和颜色对比度差)上进行了测试,并与现有系统进行了比较,显示出非常有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting people carrying objects based on an optical flow motion model
Detecting people carrying objects is a commonly formulated problem as a first step to monitor interactions between people and objects. Recent work relies on a precise foreground object segmentation, which is often difficult to achieve in video surveillance sequences due to a bad contrast of the foreground objects with the scene background, abrupt changing light conditions and small camera vibrations. In order to cope with these difficulties we propose an approach based on motion statistics. Therefore we use a Gaussian mixture motion model (GMMM) and, based on that model, we define a novel speed and direction independent motion descriptor in order to detect carried baggage as those regions not fitting in the motion description model of an average walking person. The system was tested with the public dataset PETS2006 and a more challenging dataset including abrupt lighting changes and bad color contrast and compared with existing systems, showing very promissing results.
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