An index structure for content-based retrieval from a video database

Y. Hiwatari, K. Fushikida, H. Waki
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引用次数: 4

Abstract

We present a technique for clustering an index database in order to build an index structure for content based retrieval of video to reduce the query time and make it easier for users to browse the database. The video indexes are classified by an image search engine, and the key index used in the clustering process is chosen as a representative index. When querying a large scale video database, the user can understand the contents of the video database by browsing the representative indexes and can also search for a target video scene efficiently by searching through the representative indexes. We developed a video retrieval system and conducted retrieval experiments in order to compare the retrieval accuracy of three types of index structure. The index structure constructed by k-nearest neighbor clustering achieved higher retrieval accuracy than those constructed by overlapping clustering or serially partitioned clustering.
一种基于内容的视频数据库检索索引结构
为了构建基于内容的视频检索索引结构,减少查询时间,使用户更容易浏览数据库,提出了一种索引数据库聚类技术。通过图像搜索引擎对视频索引进行分类,选取聚类过程中使用的关键索引作为代表性索引。在查询大型视频数据库时,用户可以通过浏览代表性索引来了解视频数据库的内容,也可以通过代表性索引高效地搜索到目标视频场景。为了比较三种索引结构的检索精度,我们开发了一个视频检索系统并进行了检索实验。k近邻聚类构建的索引结构比重叠聚类和连续分割聚类构建的索引结构具有更高的检索精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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