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ClusterTree: integration of cluster representation and nearest neighbor search for image databases

机译:ClusterTree:集群表示和最近邻的集成对图像数据库的搜索

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In this paper, we present the ClusterTree, a new approach to representing clusters generated by any existing clustering approach. Our cluster representation is highly adaptive in any type of clusters. A cluster is decomposed into several subclusters and represented as the union of the subclusters. The subclusters can be further decomposed. The decomposition can help isolate the most related groups within the clusters. ClusterTree incorporates the cluster presentation into the index structure to achieve effective and efficient retrieval. It is well accepted that other existing indexing algorithms degrade rapidly when dimensionality goes higher. ClusterTree can support the retrieval of the most related nearest neighbors effectively and efficiently without having to linearly scan the high dimensional dataset. We also discuss a dynamic clustering approach by exploiting the representation of clusters. We present the detailed analysis of this approach and justify it extensively by experiments.
机译:在本文中,我们介绍了ClusterTree,一种新方法来表示由任何现有聚类方法产生的集群。我们的集群表示在任何类型的集群中都很适应。群集被分解为多个子平整型器,并表示为子平整板的联合。子平整因子可以进一步分解。分解可以帮助在群集内隔离最相关的群体。 ClusterTree将集群演示文稿纳入索引结构以实现有效和有效的检索。众所周知,当维度更高时,其他现有的索引算法迅速降低。 ClusterTree可以有效且有效地支持最相关的最近邻居的检索,而无需线性扫描高维数据集。我们还通过利用群集的表示来讨论动态聚类方法。我们介绍了对这种方法的详细分析,并通过实验广泛地证明了它。

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