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Extracting Salient Points and Parts of Shapes Using Modified kd-Trees

机译:使用修改后的kd树提取形状的凸点和形状部分

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This paper explores the use of tree-based data structures in shape analysis. We consider a structure which combines several properties of traditional tree models and obtain an efficiently compressed yet faithful representation of shapes. Constructed in a top-down fashion, the resulting trees are unbalanced but resolution adaptive. While the interior of a shape is represented by just a few nodes, the structure automatically accounts for more details at wiggly parts of a shape's boundary. Since its construction only involves simple operations, the structure provides an easy access to salient features such as concave cusps or maxima of curvature. Moreover, tree serialization leads to a representation of shapes by means of sequences of salient points. Experiments with a standard shape database reveal that correspondingly trained HMMs allow for robust classification. Finally, using spectral clustering, tree-based models also enable the extraction of larger, semantically meaningful, salient parts of shapes.
机译:本文探讨了基于树的数据结构在形状分析中的使用。我们考虑一种结构,该结构结合了传统树模型的多个属性,并获得了有效压缩的忠实形状表示。以自上而下的方式构建,结果树不平衡但分辨率自适应。虽然形状的内部仅由几个节点表示,但结构会自动考虑形状边界摆动部分的更多细节。由于其结构仅涉及简单的操作,因此该结构可轻松访问明显的特征,例如凹入的尖角或最大曲率。而且,树序列化通过显着点的序列导致形状的表示。使用标准形状数据库进行的实验表明,经过相应训练的HMM可以进行可靠的分类。最后,使用频谱聚类,基于树的模型还可以提取形状较大,语义上有意义的显着部分。

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