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Fast Spectral Ranking for Similarity Search

机译:相似性搜索的快速谱排名

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摘要

Despite the success of deep learning on representing images for particular object retrieval, recent studies show that the learned representations still lie on manifolds in a high dimensional space. This makes the Euclidean nearest neighbor search biased for this task. Exploring the manifolds online remains expensive even if a nearest neighbor graph has been computed offline. This work introduces an explicit embedding reducing manifold search to Euclidean search followed by dot product similarity search. This is equivalent to linear graph filtering of a sparse signal in the frequency domain. To speedup online search, we compute an approximate Fourier basis of the graph offline. We improve the state of art on particular object retrieval datasets including the challenging Instre dataset containing small objects. At a scale of 10~5 images, the offline cost is only a few hours, while query time is comparable to standard similarity search.
机译:尽管在代表特定对象检索的图像的深度学习成功,但最近的研究表明,学习的表示仍然位于高维空间中的歧管上。这使得euclidean最近的邻居搜索偏见此任务。即使离线计算了最近的邻居图,探索歧管仍然昂贵。这项工作介绍了一个明确的嵌入减少了欧几里德搜索的歧管搜索,然后是点产品相似性搜索。这相当于频域中稀疏信号的线性图形滤波。要加快在线搜索,我们将脱机的近似傅立叶基础计算。我们改善了特定对象检索数据集的艺术状态,包括包含小对象的具有挑战性的Instre数据集。以10〜5图像的等级,离线成本仅为几个小时,而查询时间与标准相似性搜索相当。

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