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CM-BOF: visual similarity-based 3D shape retrieval using Clock Matching and Bag-of-Features

机译:CM-BOF:使用时钟匹配和特征包的基于视觉相似度的3D形状检索

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摘要

Content-based 3D object retrieval has become an active topic in many research communities. In this paper, we propose a novel visual similarity-based 3D shape retrieval method (CM-BOF) using Clock Matching and Bag-of-Features. Specifically, pose normalization is first applied to each object to generate its canonical pose, and then the normalized object is represented by a set of depth-buffer images captured on the vertices of a given geodesic sphere. Afterwards, each image is described as a word histogram obtained by the vector quantization of the image’s salient local features. Finally, an efficient multi-view shape matching scheme (i.e., Clock Matching) is employed to measure the dissimilarity between two models. When applying the CM-BOF method in non-rigid 3D shape retrieval, multidimensional scaling (MDS) should be utilized before pose normalization to calculate the canonical form for each object. This paper also investigates several critical issues for the CM-BOF method, including the influence of the number of views, codebook, training data, and distance function. Experimental results on five commonly used benchmarks demonstrate that: (1) In contrast to the traditional Bag-of-Features, the time-consuming clustering is not necessary for the codebook construction of the CM-BOF approach; (2) Our methods are superior or comparable to the state of the art in applications of both rigid and non-rigid 3D shape retrieval.
机译:基于内容的3D对象检索已成为许多研究社区中的活跃主题。在本文中,我们提出了一种使用时钟匹配和特征包的新颖的基于视觉相似性的3D形状检索方法(CM-BOF)。具体来说,首先将姿态归一化应用于每个对象以生成其规范姿态,然后通过在给定测地线的顶点上捕获的一组深度缓冲图像来表示归一化的对象。之后,每个图像都被描述为通过图像的显着局部特征的矢量量化获得的单词直方图。最后,采用有效的多视图形状匹配方案(即时钟匹配)来测量两个模型之间的不相似性。在非刚性3D形状检索中应用CM-BOF方法时,应在姿势归一化之前利用多维缩放(MDS)来计算每个对象的规范形式。本文还研究了CM-BOF方法的几个关键问题,包括视图数量,码本,训练数据和距离函数的影响。在五个常用基准上的实验结果表明:(1)与传统功能袋相比,对于CM-BOF方法的代码本构建,不需要耗时的聚类; (2)在刚性和非刚性3D形状检索的应用中,我们的方法均优于或可与现有技术相比。

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