Abstract

In this work, we propose an efficient image re-ranking method, without additional memory cost compared with the baseline method~\cite{philbin2007object}, to re-rank all retrieved images. The motivation of the proposed method is that, there are usually many visual words in the query image that only give votes to irrelevant images. With this observation, we propose to only use visual words which can help to find relevant images to re-rank the retrieved images. To achieve the goal, we first find some similar images to the query by maximizing a quadratic function when given an initial ranking of the retrieved images. Then we select query visual words with an alternating optimization strategy: (1) at each iteration, select words based on the similar images that we have found and (2) in turn, update the similar images with the selected words. These two steps are repeated until convergence. Experimental results on standard benchmark datasets show that the proposed method outperforms spatial based re-ranking methods.

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