Abstract

We revisit the implicit design choices in the popular vector of locally aggregated descriptors (VLAD), which aggregates the residuals of local image descriptors. Since original VLAD ignores high-order statistics the resultant vector is not discriminative enough. We address this issue by exploiting high-order statistics for gaining complementary information. Our contributions are two-fold: First, we present a novel high-order VLAD (HO-VLAD) with increased discriminative power. Next, we propose a light-weight retrieval framework to demonstrate HO-VLAD’s effectiveness for scalable image retrieval. Systematic experiments on two challenging public databases (INRIA Holidays, UKBench) exhibit a consistent improvement of performance with limited computational costs.

Full Text
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