2019
DOI: 10.1145/3306346.3322959
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MeshCNN

Abstract: Polygonal meshes provide an efficient representation for 3D shapes. They explicitly captureboth shape surface and topology, and leverage non-uniformity to represent large flat regions as well as sharp, intricate features. This non-uniformity and irregularity, however, inhibits mesh analysis efforts using neural networks that combine convolution and pooling operations. In this paper, we utilize the unique properties of the mesh for a direct analysis of 3D shapes using MeshCNN , a convolu… Show more

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Cited by 483 publications
(202 citation statements)
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“…15Set the weight of node vi in the next iteration plus the value of temp. (16) end for (17) end for (18) end while (19) Return the ID of the node with a highest weight.…”
Section: Opinion Leader Election Methodsmentioning
confidence: 99%
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“…15Set the weight of node vi in the next iteration plus the value of temp. (16) end for (17) end for (18) end while (19) Return the ID of the node with a highest weight.…”
Section: Opinion Leader Election Methodsmentioning
confidence: 99%
“…The gradient descent method is adopted for the optimization of auto-encoder based on convolutional neural network. The weights in the neural network are updated by Equations (16), (17), (18), (19), (20) and (21). When the training process is complete, the reconstructed adjacency matrix will be inputted into the trained neural network to retrieve the values of neurons (i.e.,  …”
mentioning
confidence: 99%
“…The most related work is MeshCNN [Hanocka et al 2019], a neural network with operators that delete and un-collapse edges from a mesh for discriminative tasks like segmentation. However, unlike Hanocka et al [2019], in this work, we propose a generative network for synthesizing new mesh geometries. Since we learn from local geometric patches, our framework is oblivious to genus, and can transfer textures between arbitrary genus shapes (Figures 2 and 8).…”
Section: Related Workmentioning
confidence: 99%
“…Yet, common 3D modeling representations are irregular and unordered, which challenges the straightforward adaptation from image-based techniques. Recent advances enable applying convolutional neural networks (CNNs) on irregular structures, like point clouds and meshes [Li et al 2018a;Hanocka et al 2019]. So far, these CNN-based methods have demonstrated promising success for discriminative tasks like classification and segmentation.…”
Section: Introductionmentioning
confidence: 99%
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