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A hybrid tree approach for efficient image database retrieval with dynamic feedback

机译:带有动态反馈的有效图像数据库检索的混合树方法

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The need always exists for indexing mechanisms that can precisely retrieve imagery from a database, as well as maintain certain efficiencies for large-scale image database search. To achieve this, we developed a hybrid search tree called SKD-Metric tree. This novel approach merges the classification power of the statistical k-dimensional tree and the efficiency of computation of the Metric-tree for nearest neighbor (NN) search. Another feature of SKD-Metric tree is its flexibility to formulate a new metric function while the retrieval system utilizes user's feedback to improve accuracy. In addition, unlike traditional relevance feedback approaches that, in most cases, sequentially search the entire database to obtain new retrieval results, SKD-Metric tree features a fast retrieval refinement procedure that needs to update only a small portion of the database. An extensive study, based on experiments performed for evaluating retrieval precision and computational efficiencies, is presented. We have applied our approach to a large-scale medical image database. The experimental results show that SKD-Metric tree can achieve a high accuracy rate with dynamic relevance feedback that requires much less computation than existing techniques.
机译:始终需要建立索引机制,以能够从数据库中精确检索图像,并保持大规模图像数据库搜索的某些效率。为此,我们开发了一种混合搜索树,称为SKD-Metric树。这种新颖的方法融合了统计k维树的分类能力和用于最近邻居(NN)搜索的Metric树的计算效率。 SKD-Metric树的另一个功能是它可以灵活地制定新的度量标准功能,而检索系统则可以利用用户的反馈来提高准确性。此外,与大多数情况下顺序搜索整个数据库以获得新的检索结果的传统相关性反馈方法不同,SKD-Metric树具有快速检索优化过程,该过程仅需要更新数据库的一小部分。进行了广泛的研究,基于为评估检索精度和计算效率而进行的实验。我们已将我们的方法应用于大型医学图像数据库。实验结果表明,与现有技术相比,SKD-Metric树可以通过动态相关反馈获得较高的准确率。

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