SyncSpecCNN: Synchronized Spectral CNN for 3D Shape Segmentation

2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2016)

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摘要
In this paper, we study the problem of semantic annotation on 3D models that are represented as shape graphs. A functional view is taken to represent localized information on graphs, so that annotations such as part segment or keypoint are nothing but 0-1 indicator vertex functions. Compared with images that are 2D grids, shape graphs are irregular and non-isomorphic data structures. To enable the prediction of vertex functions on them by convolutional neural networks, we resort to spectral CNN method that enables weight sharing by parameterizing kernels in the spectral domain spanned by graph laplacian eigenbases. Under this setting, our network, named SyncSpecCNN, strive to overcome two key challenges: how to share coefficients and conduct multi-scale analysis in different parts of the graph for a single shape, and how to share information across related but different shapes that may be represented by very different graphs. Towards these goals, we introduce a spectral parameterization of dilated convolutional kernels and a spectral transformer network. Experimentally we tested our SyncSpecCNN on various tasks, including 3D shape part segmentation and 3D keypoint prediction. State-of-the-art performance has been achieved on all benchmark datasets.
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关键词
synchronized spectral CNN,3D shape segmentation,semantic annotation,shape graphs,localized information,part segment,0-1 indicator vertex functions,nonisomorphic data structures,convolutional neural networks,weight sharing,spectral domain,graph Laplacian eigenbases,spectral parametrization,dilated convolutional kernels,spectral transformer network,keypoint prediction,irregular data structures,SyncSpecCNN,multiscale analysis
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