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Common Object Discovery as Local Search for Maximum Weight Cliques in a Global Object Similarity Graph

机译:公共对象发现为全局对象相似性图中的最大重量批分的本地搜索

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In this paper, we consider the task of discovering the common objects in images. Initially, object candidates are generated in each image and an undirected weighted graph is constructed over all the candidates. Each candidate serves as a node in the graph while the weight of the edge describes the similarity between the corresponding pair of candidates. The problem is then expressed as a search for the Maximum Weight Clique (MWC) in this graph. The MWC corresponds to a set of object candidates sharing maximal mutual similarity, and each node in the MWC represents a discovered common object across the images. Since the problem of finding the MWC is NP-hard, most research of the MWC problem focuses on developing various heuristics for finding good cliques within a reasonable time limit. We utilize a recently very popular class of heuristics called local search methods. They search for the MWC directly in the discrete domain of the solution space. The proposed approach is evaluated on the PASCAL VOC image dataset and the YouTube-Objects video dataset, and it demonstrates superior performance over recent state-of-the-art approaches.
机译:在本文中,我们考虑发现图像中的常见对象的任务。最初,在每个图像中产生对象候选,并且在所有候选中构建无向加权图。每个候选者都用作图中的节点,而边缘的权重描述了相应的候选者之间的相似性。然后将问题表示为该图中的最大重量Clique(MWC)的搜索。 MWC对应于共享最大互相相似性的一组对象候选,并且MWC中的每个节点表示跨图像的发现的公共对象。由于发现MWC的问题是NP - 硬,MWC问题的大多数研究侧重于开发在合理的时间限制内发现良好的群体的各种启发式。我们利用最近非常受欢迎的一类称为本地搜索方法的启发式机。他们直接在解决方案空间的离散域中搜索MWC。所提出的方法是在Pascal VOC图像数据集和YouTube-Objects视频数据集上进行评估,并且它展示了最近最先进的方法的卓越性能。

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