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Bundling centre for landmark image discovery

机译:地标图像发现的捆绑中心

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This paper introduces a novel method to efficiently discover landmark images in large image collections. Each cluster is considered a combination of several subclusters, which are composed of images taken from different viewpoints of an identical landmark. For each sub-cluster, we find its local centre represented by a group of similar images and define it as the bundling centre (BC). Therefore, we start image discovery by identifying the BCs and accomplish the task by efficiently growing and merging those sub-clusters represented by different BCs. In our proposed method, we use a min-Hash-based method to build a sparse graph to avoid time-consuming, full-scale, exhaustive pairwise image matching. Based on the information provided by the sparse graph, BCs are identified as local dense neighbours sharing high intra-similarity.We have also proposed a weighted voting method to grow these BCs with high accuracy. More importantly, the fixed local centres ensure that each sub-cluster contains identical landmarks and generates results with high precision. In addition, compared to a single representative (iconic) image, the group of similar images obtained by each BC can provide more comprehensive cluster information and, thus, overcome the problem of lowrecall caused by information lost during visual word quantisation. We present the experimental results of three datasets and show that, without query expansion, our method can boost the landmark image discovery performances of current techniques.
机译:本文介绍了一种有效地发现大型图像集中的地标图像的新颖方法。每个群集被认为是几个子群集的组合,这些子群集由从同一地标的不同视点拍摄的图像组成。对于每个子集群,我们找到由一组相似图像表示的本地中心,并将其定义为捆绑中心(BC)。因此,我们通过识别BC开始图像发现,并通过有效地增长和合并由不同BC代表的那些子类来完成任务。在我们提出的方法中,我们使用基于min-Hash的方法来构建稀疏图,以避免费时,满量程,详尽的成对图像匹配。根据稀疏图提供的信息,将BC识别为共享高内部相似度的局部密集邻居。我们还提出了一种加权投票方法来高精度地生长这些BC。更重要的是,固定的本地中心可确保每个子集群包含相同的界标,并产生高精度的结果。另外,与单个代表性(标志性)图像相比,每个BC获得的一组相似图像可以提供更全面的聚类信息,从而克服了视觉单词量化过程中由于信息丢失而造成的低召回率问题。我们给出了三个数据集的实验结果,表明在不扩大查询范围的情况下,我们的方法可以提高现有技术的地标图像发现性能。

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