Semantic Video Summarization Using Mutual Reinforcement Principle and Shot Arrangement Patterns

Shi Lu, Michael R. Lyu, Irwin King
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引用次数: 21

Abstract

We propose a novel semantic video summarization framework, which generates video skimmings that guarantee both the balanced content coverage and the visual coherence. First, we collect video semantic information with a semi-automatic video annotation tool. Secondly, we analyze the video structure and determine each video scene’s target skim length. Then, mutual reinforcement principle is used to compute the relative importance value and cluster the video shots according to their semantic descriptions. Finally, we analyze the arrangement pattern of the video shots, and the key shot arrangement patterns are extracted to form the final video skimming, where the video shot importance value is used as guidance. Experiments are conducted to evaluate the effectiveness of our proposed approach.
基于相互增强原理和镜头排列模式的语义视频摘要
我们提出了一种新的语义视频摘要框架,该框架生成的视频略读既保证了内容覆盖的平衡,又保证了视觉一致性。首先,我们使用半自动视频标注工具收集视频语义信息。其次,分析视频结构,确定每个视频场景的目标略读长度;然后,利用相互增强原理计算视频片段的相对重要性值,并根据语义描述对视频片段进行聚类。最后,分析视频镜头的排列模式,提取关键镜头排列模式,形成最终的视频浏览,以视频镜头重要值为指导。通过实验来评估我们提出的方法的有效性。
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