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Parts4Feature: Learning 3D Global Features from Generally Semantic Parts in Multiple Views

机译:Parts4feature:在多种视图中从一般语义零件学习3D全局功能

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Deep learning has achieved remarkable results in 3D shape analysis by learning global shape features from the pixel-level over multiple views. Previous methods, however, compute low-level features for entire views without considering part-level information. In contrast, we propose a deep neural network, called Parts4Feature, to learn 3D global features from part-level information in multiple views. We introduce a novel definition of generally semantic parts, which Parts4Feature learns to detect in multiple views from different 3D shape segmentation benchmarks. A key idea of our architecture is that it transfers the ability to detect semantically meaningful parts in multiple views to learn 3D global features. Parts4Feature achieves this by combining a local part detection branch and a global feature learning branch with a shared region proposal module. The global feature learning branch aggregates the detected parts in terms of learned part patterns with a novel multi-attention mechanism, while the region proposal module enables locally and globally discriminative information to be promoted by each other. We demonstrate that Parts4Feature outperforms the state-of-the-art under three large-scale 3D shape benchmarks.
机译:通过在多个视图上学习来自像素级的全球形状特征,深入学习在3D形状分析中取得了显着的结果。然而,以前的方法在不考虑部分级信息的情况下计算整个视图的低级功能。相比之下,我们提出了一个深入的神经网络,称为APERS4Feature,以在多种视图中从零件级信息中学习3D全局功能。我们介绍了一般的语义部分的新颖定义,该部分4Feature学会在不同的3D形状分段基准中检测多个视图。我们的架构的一个关键概念是,它会在多个视图中传输检测语义有意义的部分,以学习3D全局功能。 Parts4Feature通过将本地部件检测分支和共享区域提议模块组合的全局特征学习分支组合来实现这一点。全局特征学习分支在具有新颖的多关注机构的学习部分模式方面聚合检测到的部件,而区域提议模块能够彼此促进本地和全局鉴别的信息。我们展示了在三个大型3D形状基准下优于最先进的现实。

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