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Progressive Framework of Learning 3D Object Classes and Orientations from Deep Point Cloud Representation

机译:从深点云表示学习3D对象类和方向的渐进框架

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Deep learning approaches to the classification and orientation estimation of 3D objects have not been so successful to date. The increased complexity of dealing with 3 axes orientation variations associated with individual objects is to be blamed. To date, the existing approaches have shown limitations in their capacity of handling orientation variations in trade-off with their performance. This paper presents a progressive framework of learning 3D objects in terms of their classes and 3D orientations that overcomes the above complexity induced trade-off. By a progressive framework, we mean that the object classification and the estimation of three axes of orientations are learned one after another progressively based on whatever learned previously as prior knowledge. The proposed framework, referred to here as 3D POCO Net, is configured with multiple point cloud based deep networks that are cascaded through the association of their learned global features. As a modular architecture, 3D POCO Net offers not only efficiency and generality in representation and training but also expandability due to the progressive nature of learning. The proposed 3D POCO Net is implemented for full 3 axes orientation variations and trained with about 2.4 million orientation variations generated from ModelNet10. The high accuracy in object classification and orientation estimation verified experimentally for a large scale of 3 axes orientation variations indicates that the proposed progressive learning approach is able to overcome the aforementioned complexity induced trade-off.
机译:3D对象的分类和定向估计的深度学习方法并未如此成功。处理与单个物体相关的3个轴定向变化的增加的复杂性将被归咎于归咎于归咎于归咎于违反。迄今为止,现有方法表明了其处理折衷所需的折衷能力的局限性,以其表现。本文在其类和3D方向上呈现了学习3D对象的渐进框架,以克服上述复杂性引起的权衡。通过渐进框架,我们的意思是基于先前所学到的以前知识的任何信息,逐渐学习对象分类和三个方向轴的估计。所提出的框架,在此称为3D POCO Net,配置有多个基于云的深度网络,这些深网络通过学习全球功能的关联级联。作为模块化架构,3D POCO网不仅提供了代表和培训中的效率和一般性,而且由于学习的逐步性质,也是由于学习的逐步性质的可扩展性。所提出的3D POCO网以满3个轴定向变体实现,并培训了由ModelNet10产生的大约240万个方向变化。对象分类和取向估计的高精度实验地验证了大规模的3个轴方向变化,表明所提出的渐进学习方法能够克服上述复杂性引起的折衷。

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