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Learning Distinctive Local Object Characteristics for 3D Shape Retrieval

机译:学习3D形状检索的独特局部对象特征

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While supervised learning approaches for 3D shape retrieval have been successfully used to incorporate human knowledge about object classes based on global shape features, the incorporation of local features still remains a difficult task. First, it is not obvious how to measure the similarity between two objects each represented by a set of local features, and second, it is not clear how to choose local feature scales such that they are most distinctive. In this paper, we tackle both of these problems and present a supervised learning approach that uses arbitrary local features for 3D shape retrieval. It avoids the problem of establishing feature correspondences and automatically detects discriminating feature scales. Our experiments on the Princeton Shape Benchmark show that our method is superior to state-of-the-art shape retrieval techniques.
机译:尽管用于3D形状检索的监督学习方法已成功用于基于全局形状特征来合并有关对象类的人类知识,但是结合局部特征仍然是一项艰巨的任务。首先,不清楚如何测量分别由一组局部特征表示的两个对象之间的相似性,其次,尚不清楚如何选择局部特征比例以使其具有最大的区别。在本文中,我们解决了这两个问题,并提出了一种监督学习方法,该方法使用任意局部特征进行3D形状检索。它避免了建立特征对应的问题,并自动检测可区分的特征比例。我们在普林斯顿形状基准测试中的实验表明,我们的方法优于最新的形状检索技术。

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