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首页> 外文期刊>ACM transactions on multimedia computing communications and applications >Exploring Deep Learning for View-Based 3D Model Retrieval
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Exploring Deep Learning for View-Based 3D Model Retrieval

机译:探索基于视图的3D模型检索深度学习

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摘要

In recent years, view-based 3D model retrieval has become one of the research focuses in the field of computer ' vision and machine learning. In fact, the 3D model retrieval algorithm consists of feature extraction and similarity measurement, and the robust features play a decisive role in the similarity measurement. Although deep learning has achieved comprehensive success in the field of computer vision, deep learning features are used for 3D model retrieval only in a small number of works. To the best of our knowledge, there is no benchmark to evaluate these deep learning features. To tackle this problem, in this work we systematically evaluate the performance of deep learning features in view-based 3D model retrieval on four popular datasets (ETH, NTU60, PSB, and MVRED) by different kinds of similarity measure methods. In detail, the performance of hand-crafted features and deep learning features are compared, and then the robustness of deep learning features is assessed. Finally, the difference between single-view deep learning features and multi-view deep learning features is also evaluated. By quantitatively analyzing the performances on different datasets, it is clear that these deep learning features can consistently outperform all of the hand-crafted features, and they are also more robust than the hand-crafted features when different degrees of noise are added into the image. The exploration of latent relationships among different views in multi-view deep learning network architectures shows that the performance of multi-view deep learning outperforms that of single-view deep learning features with low computational complexity.
机译:近年来,基于视图的3D模型检索已成为研究计算机视野和机器学习领域的研究之一。事实上,3D模型检索算法包括特征提取和相似性测量,并且鲁棒特征在相似度测量中起着决定性作用。虽然深度学习在计算机视野领域取得了全面的成功,但深度学习功能仅用于3D模型检索,只能在少数作品中。据我们所知,没有基准来评估这些深度学习功能。为了解决这个问题,在这项工作中,我们通过不同种类的相似性测量方法系统地系统地评估了基于视图的3D模型检索中的深度学习功能的性能。详细地,比较了手工制作特征和深度学习特征的性能,并评估了深度学习功能的稳健性。最后,还评估了单视图深度学习功能与多视图深度学习功能之间的差异。通过定量分析不同数据集上的性能,显然这些深度学习功能可以始终如一地优于所有手工制作的功能,而且当添加不同程度的噪声时,它们也比手工制作的功能更强大。多视图深度学习网络架构中不同视图之间的潜在关系的探讨表明,多视图深度学习的性能优于低计算复杂性的单视深度学习特征的性能。

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