Changqin HuangFan JiangQionghao HuangXizhe WangZhongmei HanWeiyu Huang
Three-dimensional point cloud classification is fundamental but still challenging in 3-D vision. Existing graph-based deep learning methods fail to learn both low-level extrinsic and high-level intrinsic features together. These two levels of features are critical to improving classification accuracy. To this end, we propose a dual-graph attention convolution network (DGACN). The idea of DGACN is to use two types of graph attention convolution operations with a feedback graph feature fusion mechanism. Specifically, we exploit graph geometric attention convolution to capture low-level extrinsic features in 3-D space. Furthermore, we apply graph embedding attention convolution to learn multiscale low-level extrinsic and high-level intrinsic fused graph features together. Moreover, the points belonging to different parts in real-world 3-D point cloud objects are distinguished, which results in more robust performance for 3-D point cloud classification tasks than other competitive methods, in practice. Our extensive experimental results show that the proposed network achieves state-of-the-art performance on both the synthetic ModelNet40 and real-world ScanObjectNN datasets.
Xiaowen YangYanghui WenShichao JiaoRong ZhaoXie HanLigang He
Tengteng SongLi ZhaoZhenguo LiuYizhi He
Congcong WenLi XiangXiaojing YaoLing PengTianhe Chi
Bing HanXinyun ZhangShuang Ren
Dening LuKyle GaoQian XieLinlin XuJonathan Li