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Graph-Based Discriminative Learning for Location Recognition

机译:基于图的判别学习的位置识别

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摘要

Recognizing the location of a query image by matching it to an image database is an important problem in computer vision, and one for which the representation of the database is a key issue. We explore new ways for exploiting the structure of an image database by representing it as a graph, and show how the rich information embedded in such a graph can improve bag-of-words-based location recognition methods. In particular, starting from a graph based on visual connectivity, we propose a method for selecting a set of overlapping subgraphs and learning a local distance function for each subgraph using discriminative techniques. For a query image, each database image is ranked according to these local distance functions in order to place the image in the right part of the graph. In addition, we propose a probabilistic method for increasing the diversity of these ranked database images, again based on the structure of the image graph. We demonstrate that our methods improve performance over standard bag-of-words methods on several existing location recognition datasets.
机译:通过将查询图像与图像数据库进行匹配来识别查询图像的位置是计算机视觉中的一个重要问题,而数据库的表示是一个关键问题。我们探索通过将图像表示为图形来开发图像数据库结构的新方法,并展示嵌入在这种图形中的丰富信息如何改善基于词袋的位置识别方法。特别是,从基于可视连接的图形开始,我们提出了一种方法,该方法用于选择一组重叠的子图并使用判别技术为每个子图学习局部距离函数。对于查询图像,将根据这些局部距离函数对每个数据库图像进行排名,以便将图像放置在图形的右侧。另外,我们再次基于图像图的结构,提出了一种概率方法来增加这些排名数据库图像的多样性。我们证明,在几种现有的位置识别数据集上,我们的方法比标准的词袋方法提高了性能。

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