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Video Retrieval Method Using Non-parametric Based Motion Classification

机译:基于非参数运动分类的视频检索方法

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In this paper, we propose a novel video retrieval method using non-parametric based motion classification in the shot-based video indexing structure. The proposed system gets the representative frame and motion information from each shot segmented by the shot change detection method, and extracts visual features and non-parametric based motion information from them. Then, we construct a real-time video retrieval system using similarity comparison between these spatio-temporal features. The extraction of non-parametric based motion features, after the normalized motion vectors are created from an MPEG-compressed stream, is effectively fulfilled by discretizing each normalized motion vector into various angle bins, and by considering the mean, variance, and direction of motion vectors in these bins. In addition, we use the edge-based spatial descriptor to extract the visual feature in representative frames. Experimental evidence shows that our algorithm outperforms other video retrieval methods for image indexing and retrieval. To index the feature vectors, we use R~*-tree structures.
机译:在本文中,我们提出了一种在基于镜头的视频索引结构中使用基于非参数的运动分类的视频检索新方法。提出的系统从通过镜头变化检测方法分割的每个镜头中获取代表帧和运动信息,并从中提取视觉特征和基于非参数的运动信息。然后,我们使用这些时空特征之间的相似度比较,构建了一个实时视频检索系统。在从MPEG压缩流中创建归一化运动矢量之后,通过将每个归一化运动矢量离散化为各个角度区间,并考虑运动的均值,方差和方向,可以有效地实现基于非参数的运动特征的提取。这些垃圾箱中的向量。另外,我们使用基于边缘的空间描述符来提取代表帧中的视觉特征。实验证据表明,对于图像索引和检索,我们的算法优于其他视频检索方法。为了索引特征向量,我们使用R〜*-树结构。

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