基于高斯混合模型和支持向量机的监控视频结构化方法

Jinyong Wu, Yong Zhao, Yule Yuan, Xing Zhang, Yike Wang
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引用次数: 0

摘要

由于监控视频是一种非结构化媒体,不利于视频的智能检索和挖掘。本文提出了一种基于高斯混合模型和支持向量机的监控场景视频结构化方法。首先,对视频场景进行高斯背景建模,隔离运动对象层;其次,采用角点检测方法提取运动物体的视觉感知信息。第三,以物体质心为中心提取物体的多粒度感知特征。最后,构建2级SVM分类器。通过该分类器可以对运动物体进行语义标注,从而获得对场景的结构化描述。实验结果表明,该方法可以有效地避免亮度变化和叶片运动引起的干扰。它适用于监控场景视频的结构化分析应用,可以为视频内容的智能检索和挖掘提供技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method of Surveillance Video Structured Based on Gaussian Mixture Model and Support Vector Machine
Since that the surveillance video is an unstructured media, it is not beneficial for the video intelligent retrieval and mining. An approach that is based on Gaussian mixture model and support vector machine has been put forward in this paper, which can make the video of surveillance scene structured. First, it constructs Gaussian background modeling to video scene, and isolates the motion object layer. Second, the visual perceptive information from moving object can be extracted by the angular point detecting method. Third, the multi-granularity perceptive feature of the object can be extracted by the object centroid-centred. Last, a 2-level SVM classifier should be build. By this classifier the semantics can be labeled to the moving objects, and then the structured description of the scenes can be obtained. The experimental results show that the presented method can avoid the interference caused by luminance changes and the motion of the leaves effectively. It is suitable for the video of surveillance scene in structured analysis application and can be a technical support for the intelligent retrieval and mining of video contents.
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