利用聚类数据流检测视频监控中掉落的非突出物体

P. Jayasuganthi, V. Jeyaprabha, P. S. A. Kumar, Dr.V. Vaidehi
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引用次数: 2

摘要

随着越来越多的监控摄像机部署在一个设施或地区,对自动检测可疑物体的需求也在增加。在最近的文献中,大部分的工作集中在视频序列中的突出目标检测上。本文提出了一种基于前景物体纹理的行人序列中突出物体和非突出物体的检测方法。首先利用混合高斯算法对静态背景进行建模,并对前景目标进行分割。然后逐帧检测目标,然后计算每个blob的均值和标准差等统计参数,形成数据流。这些参数在数据流上使用k-means方法在线聚类,以便找到异常值(丢弃的对象)。这里k是基于视频中出现的物体的数量。最后,我们在视频监控在线存储库[15]和我们自己的数据集上实现了一个标准数据集。实验结果表明,该系统性能合理,能够准确地检测出视频数据流中的掉落物体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of dropped non protruding objects in video surveillance using clustered data stream
As more and more surveillance cameras are deployed in a facility or area the demand for automatic detection of suspicious objects is increasing. Most of the work in recent literature concentrated on protruding object detection in video sequences. This paper proposes a novel approach to detect protruding as well as non protruding objects in sequences of walking pedestrians based on texture of the foreground objects. Initially static background is modeled with the help of mixture of Gaussian algorithm and the foreground objects are segmented. Later object is detected frame by frame which is followed by the calculation of statistical parameters such as mean and standard deviation, in every blob, to form data streams. These parameters are clustered online using k-means methodology over data streams, in order to find the outliers (dropped objects). Here k is based on the number of objects present in the video. Finally we have implemented on a standard data set from the website Video Surveillance Online Repository [15] and also our own dataset. The experimental results show that our system performs reasonable well and can accurately detect dropped objects in video data streams.
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