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Trie for similarity matching in large video databases

机译:尝试在大型视频数据库中进行相似度匹配

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摘要

Similarity matching in video databases is of growing importance in many new applications such as video clustering and digital video libraries. In order to provide efficient access to relevant data in large databases, there have been many research efforts in video indexing with diverse spatial and temporal features. However, most of the previous works relied on sequential matching methods or memory-based inverted file techniques, thus making them unsuitable for a large volume of video databases. In order to resolve this problem, this paper proposes an effective and scalable indexing technique using a trie, originally proposed for string matching, as an index structure. For building an index, we convert each frame into a symbol sequence using a window order heuristic and build a disk-resident trie from a set of symbol sequences. For query processing, we perform a depth-first traversal on the trie and execute a temporal segmentation. To verify the superiority of our approach, we perform several experiments with real and synthetic data sets. The results reveal that our approach consistently outperforms the sequential scan method, and the performance gain is maintained even with a large volume of video databases.
机译:视频数据库中的相似性匹配在许多新应用中(例如视频群集和数字视频库)越来越重要。为了提供对大型数据库中相关数据的有效访问,在具有不同空间和时间特征的视频索引中已经进行了许多研究工作。但是,大多数先前的工作都依赖于顺序匹配方法或基于内存的倒排文件技术,因此使其不适用于大量视频数据库。为了解决此问题,本文提出了一种有效且可扩展的索引技术,该技术使用最初为字符串匹配而提出的trie作为索引结构。为了建立索引,我们使用窗口顺序试探法将每个帧转换为符号序列,并根据一组符号序列构建磁盘驻留的特里。对于查询处理,我们在特里执行深度优先遍历并执行时间分割。为了验证我们方法的优越性,我们对真实和综合数据集进行了多次实验。结果表明,我们的方法始终优于顺序扫描方法,即使使用大量视频数据库也可以保持性能提升。

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