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BlockB-Tree: A new index structure combined compact B+-tree with block distance

机译:BlockB-树:一种新的索引结构,其结合了具有块距的紧凑型B +-树

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To overcome the "curse of dimensionality", the high-efficient index structures which map the high-dimensional data to single dimension values are proposed. None of these index structures can support the use of block distance for similarity search directly. Block distance is one of the widely used similarity measurement algorithms in CBIR, and it is very simple and has excellent query performance. In this paper, these two algorithms are effectively combined, and the BlockB-Tree is proposed. The BlockB-Tree uses the block distance to map the high-dimensional feature data to single dimension key values, and then uses the compact B+-tree to manage these key values. It can not only directly support the use of block distance for similarity search, but also can effectively support the use of Euclidean distance for similarity search.
机译:为了克服“维数的诅咒”,提出了将高维数据映射到单维值的高效索引结构。这些索引结构都不能支持直接使用块距离进行相似性搜索。块距离是CBIR中广泛使用的相似度度量算法之一,它非常简单,并且具有出色的查询性能。本文将这两种算法有效地结合在一起,提出了BlockB-Tree。 BlockB树使用块距将高维特征数据映射到一维键值,然后使用紧凑的B +树来管理这些键值。它不仅可以直接支持将块距离用于相似度搜索,而且可以有效地支持将欧几里德距离用于相似度搜索。

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