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Efficient semi-supervised multiple feature fusion with out-of-sample extension for 3D model retrieval

机译:高效的半监督多特征融合,并带有样本外扩展,可进行3D模型检索

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Multiple visual features have been proposed and used in 3-dimensional (3D) model retrieval in recent years. Since each visual feature reflects a unique characteristic about the model, they have unequal discriminative power with respect to a specific category of 3D model, and they are complementary to each other in model representation. Thus, it would be beneficial to combine multiple visual features together in 3D model retrieval. In light of this, we propose an efficient Semi-supervised Multiple Feature Fusion (SMFF) method for view-based 3D model retrieval in this paper. Specifically, We first extract multiple visual features to describe both the local and global appearance characteristics of multiple 2D projected images that are generated from 3D models. Then, SMFF is adopted to learn a more compact and discriminative low-dimensional feature representation via multiple feature fusion using both the labeled and unlabeled 3D models. Once the low-dimensional features have been learned, many existing methods such as SVM and KNN can be used in the subsequent retrieval phase. Moreover, an out-of-sample extension of SMFF is provided to calculate the low-dimensional features for the newly added 3D models in linear time. Experiments on two public 3D model datasets demonstrate that using such a learned feature representation can significantly improve the performance of 3D model retrieval and the proposed method outperforms the other competitors. (C) 2015 Elsevier B.V. All rights reserved.
机译:近年来,已经提出了多种视觉特征并将其用于3维(3D)模型检索。由于每个视觉特征都反映了模型的独特特征,因此它们对3D模型的特定类别具有不平等的判别力,并且在模型表示中彼此互补。因此,在3D模型检索中将多个视觉特征组合在一起将是有益的。有鉴于此,我们提出了一种有效的半监督多特征融合(SMFF)方法,用于基于视图的3D模型检索。具体来说,我们首先提取多个视觉特征来描述从3D模型生成的多个2D投影图像的局部和全局外观特征。然后,采用SMFF通过使用标记的和未标记的3D模型进行多特征融合来学习更紧凑,更具判别力的低维特征表示。一旦了解了低维特征,便可以在随后的检索阶段中使用许多现有方法,例如SVM和KNN。此外,提供了SMFF的样本外扩展,以在线性时间内计算新添加的3D模型的低维特征。在两个公共3D模型数据集上的实验表明,使用这种学习到的特征表示可以显着提高3D模型检索的性能,并且所提出的方法优于其他竞争对手。 (C)2015 Elsevier B.V.保留所有权利。

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