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3DTI-Net: Learn 3D Transform-Invariant Feature Using Hierarchical Graph CNN

机译:3DTI-NET:使用分层图CNN学习3D变换不变功能

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Recently, emerging point cloud dedicated deep learning frameworks, such as PointNet and PointNet++, have achieved remarkable advantage in both accuracy and speed over traditional handcrafted ones. However, since the point coordinates of point clouds are represented in various local coordinate systems, most existing methods require additional preprocessing on raw point clouds. In this work, we design an efficient transform-invariant framework (named 3DTI-Net) for point cloud processing without the need of such preprocessing. 3DTI-Net consists of a transform invariant feature encoder as the front-end and a hierarchical graph convolutional neural network as the back-end. It achieves transform invariant feature extraction by learning inner 3D geometry information based on local graph representation. Experiments results on various classification and retrieval tasks show that, 3DTI-Net is able to learn 3D feature efficiently and can achieve state-of-the-art performance in rotated 3D object classification and retrieval.
机译:最近,新兴点云专用深层学习框架(如PointNet和PointNet ++)在传统手工制作中的准确性和速度都取得了显着的优势。然而,由于点云的点坐标在各种本地坐标系中表示,所以大多数现有方法都需要在原始点云上进行额外的预处理。在这项工作中,我们设计了一个有效的转换不变框架(名为3DTI-Net),用于点云处理,而无需这种预处理。 3DTI-Net由变换不变特征编码器作为前端和分层图形卷积神经网络作为后端。它通过基于本地图形表示学习内部3D几何信息来实现变换不变特征提取。实验导致各种分类和检索任务表明,3DTI-NET能够有效地学习3D功能,并且可以在旋转的3D对象分类和检索中实现最先进的性能。

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