基于语义的随机建模视频索引

Yong Wei, S. Bhandarkar, Kang Li
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引用次数: 16

摘要

语义视频索引是实现视频自动检索和个性化的第一步。我们提出了一个数据驱动的随机建模方法来执行视频分割和视频索引在一个单一的通道。与现有的基于隐马尔可夫模型(HMM)的视频分割和索引技术相比,该方法具有以下优点:(1)定义视频节目的概率语法完全由训练数据生成,使得该方法无需手动重新定义节目模型即可处理各种类型的视频;(2) Tamura特征的使用提高了时间分割和索引的准确性;(3)消除了使用HMM对视频编辑效果建模的需要,从而简化了训练数据的处理和收集,并确保数据库中的所有视频片段都标注了具有明确语义的概念,以便于基于语义的视频检索。给出了广播新闻视频的实验结果。
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Semantics-Based Video Indexing using a Stochastic Modeling Approach
Semantic video indexing is the first step towards automatic video retrieval and personalization. We propose a data-driven stochastic modeling approach to perform both video segmentation and video indexing in a single pass. Compared with the existing hidden Markov model (HMM)-based video segmentation and indexing techniques, the advantages of the proposed approach are as follows: (1) the probabilistic grammar defining the video program is generated entirely from the training data allowing the proposed approach to handle various kinds of videos without having to manually redefine the program model; (2) the proposed use of the Tamura features improves the accuracy of temporal segmentation and indexing; (3) the need to use an HMM to model the video edit effects is obviated thus simplifying the processing and collection of training data and ensuring that all video segments in the database are labeled with concepts that have clear semantic meanings in order to facilitate semantics-based video retrieval. Experimental results on broadcast news video are presented.
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