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首页> 外文期刊>Computer Graphics Forum: Journal of the European Association for Computer Graphics >Projective Feature Learning for 3D Shapes with Multi-View Depth Images
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Projective Feature Learning for 3D Shapes with Multi-View Depth Images

机译:具有多视图深度图像的3D形状的投影特征学习

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摘要

Feature learning for 3D shapes is challenging due to the lack of natural paramterization for 3D surface models. We adopt the multi-view depth image representation and propose Multi-View Deep Extreme Learning Machine (MVD-ELM) to achieve fast and quality projective feature learning for 3D shapes. In contrast to existing multi-view learning approaches, our method ensures the feature maps learned for different views are mutually dependent via shared weights and in each layer, their unprojections together form a valid 3D reconstruction of the input 3D shape through using normalized convolution kernels. These lead to a more accurate 3D feature learning as shown by the encouraging results in several applications. Moreover, the 3D reconstruction property enables clear visualization of the learned features, which further demonstrates the meaningfulness of our feature learning.
机译:由于缺乏3D表面模型的自然参数化,因此3D形状的特征学习非常具有挑战性。我们采用多视图深度图像表示,并提出了多视图深度极限学习机(MVD-ELM),以实现针对3D形状的快速,高质量的投影特征学习。与现有的多视图学习方法相比,我们的方法可确保通过共享权重为不同视图学习的特征图相互依赖,并且在每一层中,它们的未投影共同通过使用归一化卷积核形成输入3D形状的有效3D重构。这些结果导致更准确的3D特征学习,如若干应用中令人鼓舞的结果所示。此外,3D重建属性使学习到的特征清晰可见,这进一步证明了我们进行特征学习的意义。

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