Attentional Shapecontextnet For Point Cloud Recognition

2018 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2018)

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摘要
We tackle the problem of point cloud recognition. Unlike previous approaches where a point cloud is either converted into a volume/image or represented independently in a permutation-invariant set, we develop a new representation by adopting the concept of shape context as the building block in our network design. The resulting model, called ShapeContextNet, consists of a hierarchy with modules not relying on a fixed grid while still enjoying properties similar to those in convolutional neural networks being able to capture and propagate the object part information. In addition, we find inspiration from self-attention based models to include a simple yet effective contextual modeling mechanism making the contextual region selection, the feature aggregation, and the feature transformation process fully automatic. ShapeContextNet is an end-to-end model that can be applied to the general point cloud classification and segmentation problems. We observe competitive results on a number of benchmark datasets.
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关键词
attentional ShapeContextNet,point cloud recognition,network design,convolutional neural networks,self-attention based models,effective contextual modeling mechanism,end-to-end model,general point cloud classification,segmentation problems,permutation-invariant set,object part information,contextual region selection,feature aggregation,feature transformation process
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