PFCNN: Convolutional Neural Networks on 3D Surfaces Using Parallel Frames

CVPR(2020)

引用 45|浏览251
暂无评分
摘要
Surface meshes are widely used shape representations and capture finer geometry data than point clouds or volumetric grids, but are challenging to apply CNNs directly due to their non-Euclidean structure. We use parallel frames on surface to define PFCNNs that enable effective feature learning on surface meshes by mimicking standard convolutions faithfully. In particular, the convolution of PFCNN not only maps local surface patches onto flat tangent planes, but also aligns the tangent planes such that they locally form a flat Euclidean structure, thus enabling recovery of standard convolutions. The alignment is achieved by the tool of locally flat connections borrowed from discrete differential geometry, which can be efficiently encoded and computed by parallel frame fields. In addition, the lack of canonical axis on surface is handled by sampling with the frame directions. Experiments show that for tasks including classification, segmentation and registration on deformable geometric domains, as well as semantic scene segmentation on rigid domains, PFCNNs achieve robust and superior performances without using sophisticated input features than state-of-the-art surface based CNNs.
更多
查看译文
关键词
flat Euclidean structure,discrete differential geometry,parallel frame fields,frame directions,flat tangent planes,local surface patches,standard convolutions,nonEuclidean structure,CNNs,volumetric grids,point clouds,geometry data,shape representations,surface meshes,parallel frames,convolutional neural networks,PFCNN
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要