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Algorithm BOSS (Bag-of-Salient local Spectrums) for non-rigid and partial 3D object retrieval

机译:用于非刚性和部分3D对象检索的算法BOSS(显着性局部频谱)

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The aim of the proposed algorithm is to expedite three-dimensional objects indexing and retrieval. Investigating the Bag-of-Features (BoF) paradigm, we focus on a set of extracted local descriptors from 3D objects. Using scalar function calculated on the surface mesh, the algorithm extracts the salient points, and then associates each of these points with a local Fourier descriptor. The descriptor is computed on the neighboring salient points by projecting the geometry onto the first eigenvectors of Laplace-Beltrami operator. Additionally, through an offline learning step, a visual dictionary is built by clustering a large set of feature descriptors. Then, each 3D shape is described by a histogram of these visual words occurrences weighted using the number of their local descriptors. Experimental results show the highly discriminative capability of the proposed approach against rigid and non-rigid transformations, noise and geometry changes. The performance of our algorithm is also demonstrated on global and partial shape retrieval. (C) 2015 Elsevier B.V. All rights reserved.
机译:该算法的目的是加快三维对象的索引和检索。在研究功能袋(BoF)范式时,我们集中于从3D对象中提取的一组局部描述符。使用在曲面网格上计算的标量函数,该算法提取显着点,然后将这些点中的每一个与局部傅立叶描述符相关联。通过将几何投影到Laplace-Beltrami算子的第一特征向量上,可以在相邻的显着点上计算描述符。此外,通过离线学习步骤,通过将大量特征描述符聚类来构建可视词典。然后,通过这些视觉单词出现的直方图描述每个3D形状,这些直方图使用其本地描述符的数量加权。实验结果表明,该方法对刚性和非刚性变换,噪声和几何形状变化具有很高的判别能力。我们的算法的性能也在全局和部分形状检索中得到了证明。 (C)2015 Elsevier B.V.保留所有权利。

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