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PSNet: A Style Transfer Network for Point Cloud Stylization on Geometry and Color

机译:PSNet:用于几何图形和颜色的点云样式化的样式传输网络

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We propose a neural style transfer method for colored point clouds which allows stylizing the geometry and/or color property of a point cloud from another. The stylization is achieved by manipulating the content representations and Gram-based style representations extracted from a pretrained PointNet-based classification network for colored point clouds. As Gram-based style representation is invariant to the number or the order of points, the style can also be an image in the case of stylizing the color property of a point cloud by merely treating the image as a set of pixels. Experimental results and analysis demonstrate the capability of the proposed method for stylizing a point cloud either from another point cloud or an image.
机译:我们提出了一种用于彩色点云的神经样式转移方法,该方法可以将另一个点云的几何形状和/或颜色属性进行样式化。样式化是通过操纵从预先训练的基于PointNet的有色点云分类网络中提取的内容表示形式和基于Gram的样式表示形式来实现的。由于基于Gram的样式表示形式不会改变点的数量或顺序,因此在仅通过将图像视为一组像素来对点云的颜色属性进行样式化的情况下,样式也可以是图像。实验结果和分析证明了所提出的方法从另一个点云或图像中对点云进行样式化的能力。

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