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首页> 外文期刊>IEEE Transactions on Industrial Electronics >3-D Object Retrieval With Hausdorff Distance Learning
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3-D Object Retrieval With Hausdorff Distance Learning

机译:使用Hausdorff远程学习进行3D对象检索

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摘要

In view-based 3-D object retrieval, each object is described by a set of views. Group matching thus plays an important role. Previous research efforts have shown the effectiveness of Hausdorff distance in group matching. In this paper, we propose a 3-D object retrieval scheme with Hausdorff distance learning. In our approach, relevance feedback information is employed to select positive and negative view pairs with a probabilistic strategy, and a view-level Mahalanobis distance metric is learned. This Mahalanobis distance metric is adopted in estimating the Hausdorff distances between objects, based on which the objects in the 3-D database are ranked. We conduct experiments on three testing data sets, and the results demonstrate that the proposed Hausdorff learning approach can improve 3-D object retrieval performance.
机译:在基于视图的3D对象检索中,每个对象由一组视图描述。因此,组匹配起着重要的作用。先前的研究工作已经证明了Hausdorff距离在群体匹配中的有效性。在本文中,我们提出了一种基于Hausdorff远程学习的3D对象检索方案。在我们的方法中,采用相关性反馈信息以概率策略选择正视图和负视图对,并且学习了视图级马氏距离度量。该Mahalanobis距离度量用于估计对象之间的Hausdorff距离,根据该距离对3-D数据库中的对象进行排名。我们对三个测试数据集进行了实验,结果表明,提出的Hausdorff学习方法可以提高3-D对象检索性能。

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