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引用次数: 0

摘要

近二十年来,高维数据集的最近邻搜索一直是研究的热点。基于内容的多媒体索引一直是一个活跃的研究领域,因为多媒体内容被映射成高维数字向量,然后存储在高维索引中。对于大型集合,使用了高性能环境和大量主内存。本文回顾了NV-Tree(最近向量树),一种基于磁盘的数据结构,它解决了在高维数据集集合中定位k个最近邻居的具体问题。nv树已经在工业中用于索引超过15万小时的视频,用于(非常有效的)近重复检测。我们提出了一个批判性的总结发表的研究文献相关的NV-Tree正在考虑研究。目的是建立对特定主题的现有思想和研究的熟悉,这可能证明未来对以前被忽视或研究不足的领域的研究是合理的。
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A study on Nearest-Vector Tree
From the past two decades, the research area of nearest neighbor search in high dimensional data sets has always been in the limelight. Content-based multimedia indexing has been an active area of research as multimedia content is mapped into high-dimensional vectors of numbers, which are then stored in a high-dimensional index. For large collections, high-performance environments and large amount of main memory have been used. This paper reviews the NV-Tree (Nearest Vector Tree), a disk based data structure, which addresses the specific problem of locating the k-nearest neighbors within a collection of high dimensional data sets. The NV-tree is already used in industry to index more than 150 thousand hours of video for (very effective) near-duplicate detection. We present a critical summary of published research literature pertinent to NV-Tree under contemplation for research. The purpose is to create familiarity with existing thinking and research on a particular topic, which may justify future research into a previously overlooked or understudied area.
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