基于深度图像自动生成的点云分类网络结构

Riccardo Roveri, Lukas Rahmann, C. Öztireli, M. Gross
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引用次数: 56

摘要

提出了一种新的神经网络结构用于点云分类。我们的关键思想是将3D无序输入数据自动转换为一组有用的2D深度图像,并利用性能良好的图像分类cnn对其进行分类。我们提出了一种新的可微模块设计,用于从点云生成深度图像。这些模块可以与任何网络架构相结合来处理点云。我们将它们与最先进的分类网络相结合,并获得与最先进的点云分类相竞争的结果。此外,我们的架构自动生成表示输入点云的信息图像,这可以用于点云可视化等进一步的应用。
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A Network Architecture for Point Cloud Classification via Automatic Depth Images Generation
We propose a novel neural network architecture for point cloud classification. Our key idea is to automatically transform the 3D unordered input data into a set of useful 2D depth images, and classify them by exploiting well performing image classification CNNs. We present new differentiable module designs to generate depth images from a point cloud. These modules can be combined with any network architecture for processing point clouds. We utilize them in combination with state-of-the-art classification networks, and get results competitive with the state of the art in point cloud classification. Furthermore, our architecture automatically produces informative images representing the input point cloud, which could be used for further applications such as point cloud visualization.
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