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Query-Adaptive Hash Code Ranking for Large-Scale Multi-View Visual Search

机译:大型多视图视觉搜索的查询自适应哈希码排名

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摘要

Hash-based nearest neighbor search has become attractive in many applications. However, the quantization in hashing usually degenerates the discriminative power when using Hamming distance ranking. Besides, for large-scale visual search, existing hashing methods cannot directly support the efficient search over the data with multiple sources, and while the literature has shown that adaptively incorporating complementary information from diverse sources or views can significantly boost the search performance. To address the problems, this paper proposes a novel and generic approach to building multiple hash tables with multiple views and generating fine-grained ranking results at bitwise and tablewise levels. For each hash table, a query-adaptive bitwise weighting is introduced to alleviate the quantization loss by simultaneously exploiting the quality of hash functions and their complement for nearest neighbor search. From the tablewise aspect, multiple hash tables are built for different data views as a joint index, over which a query-specific rank fusion is proposed to rerank all results from the bitwise ranking by diffusing in a graph. Comprehensive experiments on image search over three well-known benchmarks show that the proposed method achieves up to 17.11% and 20.28% performance gains on single and multiple table search over the state-of-the-art methods.
机译:基于哈希的最近邻居搜索已在许多应用程序中变得有吸引力。但是,使用汉明距离排序时,散列中的量化通常会降低判别能力。此外,对于大规模视觉搜索,现有的散列方法不能直接支持对具有多个源的数据进行有效搜索,而文献表明自适应地合并来自不同源或视图的补充信息可以显着提高搜索性能。为了解决这些问题,本文提出了一种新颖且通用的方法来构建具有多个视图的多个哈希表,并生成按位和按表级别的细粒度排名结果。对于每个哈希表,引入了查询自适应按位加权,以通过同时利用哈希函数的质量及其对最近邻居搜索的补充来减轻量化损失。从表格的角度来看,针对不同的数据视图构建了多个哈希表作为联合索引,在该哈希表上提出了特定于查询的排名融合,以通过扩散图的方式对按位排序的所有结果进行排名。在三个著名基准上进行的图像搜索的综合实验表明,与最新方法相比,该方法在单表和多表搜索中可分别实现17.11%和20.28%的性能提升。

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