Detecting New Stable Objects In Surveillance Video

R. Mathew, Zhenghua Yu, Jian Zhang
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引用次数: 37

Abstract

We describe a novel method to detect new stable objects in video. This includes detecting new objects that appear in a scene and remain stationary for a period of time. Examples include detecting a dropped bag or a parked car. Our method utilizes the state transition history (or a record of the "life cycle") of individual Gaussian distributions in a Gaussian Mixture Model (GMM) used to model the background. In typical implementations of the GMM, this state transition information is ignored however we show that by observing and retaining the history of state transitions of individual distributions, it is possible to detect long term changes in a scene. In particular we identify changes to the most probable background distribution and impose certain conditions on the characteristics and temporal behavior of this distribution. Results presented in this paper illustrate the success of the proposed method and its relevance to surveillance applications
在监控视频中检测新的稳定物体
提出了一种检测视频中新的稳定目标的新方法。这包括检测出现在场景中并在一段时间内保持静止的新物体。例子包括检测掉落的包或停放的汽车。我们的方法利用高斯混合模型(GMM)中单个高斯分布的状态转换历史(或“生命周期”的记录)来建模背景。在GMM的典型实现中,这种状态转换信息被忽略,然而我们表明,通过观察和保留单个分布的状态转换历史,可以检测场景中的长期变化。特别是,我们确定最可能的背景分布的变化,并对该分布的特征和时间行为施加某些条件。本文给出的结果说明了所提出方法的成功及其与监控应用的相关性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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