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首页> 外文期刊>ACM Transactions on Graphics >Unsupervised Co-Segmentation of a Set of Shapes via Descriptor-Space Spectral Clustering
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Unsupervised Co-Segmentation of a Set of Shapes via Descriptor-Space Spectral Clustering

机译:通过描述符空间光谱聚类对形状进行无监督的共分割

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We introduce an algorithm for unsupervised co-segmentation of a set of shapes so as to reveal the semantic shape parts and establish their correspondence across the set. The input set may exhibit significant shape variability where the shapes do not admit proper spatial alignment and the corresponding parts in any pair of shapes may be geometrically dissimilar. Our algorithm can handle such challenging input sets since, first, we perform co-analysis in a descriptor space, where a combination of shape descriptors relates the parts independently of their pose, location, and cardinality. Secondly, we exploit a key enabling feature of the input set, namely, dissimilar parts may be “linked” through third-parties present in the set. The links are derived from the pairwise similarities between the parts’ descriptors. To reveal such linkages, which may manifest themselves as anisotropic and non-linear structures in the descriptor space, we perform spectral clustering with the aid of diffusion maps. We show that with our approach, we are able to co-segment sets of shapes that possess significant variability, achieving results that are close to those of a supervised approach.
机译:我们介绍了一种用于形状集合的无监督共分割的算法,以揭示语义形状部分并建立它们在整个集合中的对应关系。输入集可能会表现出明显的形状可变性,其中形状不允许适当的空间对齐,并且任何一对形状中的对应部分在几何上都不相同。我们的算法可以处理这样具有挑战性的输入集,因为首先,我们在描述符空间中执行协分析,其中形状描述符的组合独立于零件的姿势,位置和基数关联零件。其次,我们利用输入集的关键启用功能,即,可以通过集合中存在的第三方“链接”不同的部分。链接是根据零件描述符之间的成对相似性得出的。为了揭示这种可能在描述符空间中表现为各向异性和非线性结构的联系,我们借助扩散图进行光谱聚类。我们证明,通过我们的方法,我们能够将具有明显可变性的形状集进行细分,从而获得与监督方法相近的结果。

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