A family of contextual measures of similarity between distributions with application to image retrieval

F. Perronnin, Yan Liu, J. Renders
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引用次数: 42

Abstract

We introduce a novel family of contextual measures of similarity between distributions: the similarity between two distributions q and p is measured in the context of a third distribution u. In our framework any traditional measure of similarity / dissimilarity has its contextual counterpart. We show that for two important families of divergences (Bregman and Csisz'ar), the contextual similarity computation consists in solving a convex optimization problem. We focus on the case of multinomials and explain how to compute in practice the similarity for several well-known measures. These contextual measures are then applied to the image retrieval problem. In such a case, the context u is estimated from the neighbors of a query q. One of the main benefits of our approach lies in the fact that using different contexts, and especially contexts at multiple scales (i.e. broad and narrow contexts), provides different views on the same problem. Combining the different views can improve retrieval accuracy. We will show on two very different datasets (one of photographs, the other of document images) that the proposed measures have a relatively small positive impact on macro Average Precision (which measures purely ranking) and a large positive impact on micro Average Precision (which measures both ranking and consistency of the scores across multiple queries).
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分布间相似性的一组上下文度量及其在图像检索中的应用
我们引入了一组新的分布之间相似性的上下文度量:两个分布q和p之间的相似性是在第三个分布u的背景下测量的。在我们的框架中,任何传统的相似性/不相似性度量都有其上下文对应。我们表明,对于两个重要的散度族(Bregman和cissz 'ar),上下文相似性计算包括解决一个凸优化问题。我们将重点讨论多项式的情况,并解释如何在实践中计算几种众所周知的度量的相似度。然后将这些上下文度量应用于图像检索问题。在这种情况下,上下文u是从查询q的邻居中估计出来的。我们的方法的一个主要好处在于,使用不同的上下文,特别是在多个尺度上的上下文(即广义和狭义上下文),可以对同一个问题提供不同的观点。结合不同的视图可以提高检索的准确性。我们将在两个非常不同的数据集(一个是照片,另一个是文档图像)上展示,提议的度量对宏观平均精度(衡量纯粹的排名)有相对较小的积极影响,而对微观平均精度(衡量多个查询的排名和分数的一致性)有很大的积极影响。
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