基于改进k -均值聚类的视频镜头语义分组

Partha Pratim Mohanta, S. Saha
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引用次数: 6

摘要

视频中镜头的语义分组可以被认为是场景检测的第一步。它还可以方便地识别视觉上相似的场景。这样的分组还有助于创建语义内容表和高效的内容浏览。在这项工作中,我们提出了一个有效的方案来形成这样的分组。我们解决了在关键帧和其他采样帧的帮助下表示镜头的重要问题。最后,用代表帧对应的底层特征向量表示镜头的内容。相似的镜头按照改进的k-means聚类算法分组。修改已被纳入以适应关键帧和采样帧所扮演的不同角色。我们对不同类型的视频数据进行了实验,得到了满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Grouping of Shots in a Video Using Modified K-Means Clustering
Semantic grouping of the shots in a video can bethought of as first step towards scene detection. It also facilitates the easy identification of visually similar scenes. Such grouping also help in the creation of semantic content table and efficient content browsing. In this work, we present an effective scheme to form such groupings. We address the important issue of representing a shot with the help of keyframes and other sampled frames from the shot. Finally, the content of the shot is denoted by the low-level feature vectors corresponding to the representative frames. Similar shots are grouped following a modified k-means clustering algorithm. Modifications have been incorporated to accommodate the differing roles played by the keyframes and sampled frames. We have carried out the experiment with different type of video data and result obtained is satisfactory.
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