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2D compressive sensing and multi-feature fusion for effective 3D shape retrieval

机译:2D压缩传感和多种特征融合,有效3D形检索

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Abstract 3D shape retrieval is always a challenging research topic because of complex geometric structural variations involved. Although many feature extraction and retrieval algorithms have been proposed, they generally only use single 3D model descriptor hence cannot obtain better retrieval performance. In this paper, we propose a new 3D shape retrieval framework based on compressive sensing (CS) and multi-feature fusion (MFF). Firstly, we extract three new features including the CS Chebyshev ray (CSCR) feature, the CS spatial hierarchical (CSSH) feature and the Extended Gaussian sphere (EGS) feature. Actually, CSCR, CSSH and EGS respectively represent the volume tensor, the layered detail and the statistical space distribution on the model surface of a 3D model. To make the best use of these features, a supervised learning is used to determine the weighting coefficients for these features. Finally, the features and their corresponding weighting coefficients are used to determine the similarity of 3D models in the multi-feature fusion (MFF) framework for 3D shape retrieval. For performance assessment, two publicly available datasets that contain 3D models with large geometric variations are used, including ModelNet-10 and PSB datasets. Comprehensive experimental results have demonstrated the efficacy of the proposed method for 3D shape retrieval. ]]>
机译:<![cdata [ 抽象 3D形状检索始终是一个具有挑战性的研究主题,因为涉及复杂的几何结构变体。尽管已经提出了许多特征提取和检索算法,但它们通常仅使用单个3D模型描述符,因此无法获得更好的检索性能。在本文中,我们提出了一种基于压缩感测(CS)和多特征融合(MFF)的新的3D形检索框架。首先,我们提取三种新功能,包括CS Chebyshev Ray(CSCR)特征,CS空间分层(CSSH)特征和扩展的高斯球体(EGS)功能。实际上,CSCR,CSSH和EGS分别表示3D模型的模型表面上的体积张量,分层细节和统计空间分布。为了充分利用这些特征,使用监督学习来确定这些特征的加权系数。最后,使用特征及其相应的加权系数来确定用于3D形状检索的多特征融合(MFF)框架中的3D模型的相似性。对于性能评估,使用包含具有大几何变体的3D模型的两个可公开的数据集,包括ModelNet-10和PSB数据集。综合实验结果表明了所提出的3D形状检索方法的功效。 ]]>

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