Convolutional neural network has made remarkable achievements in classification of idealized point cloud, however, non-idealized point cloud classification is still a challenging task. In this paper, DNDFN, namely, Dual-Neighborhood Deep Fusion Network, is proposed to deal with this problem. DNDFN has two key points. One is combination of local neighborhood and global neigh-borhood. nearest neighbor (kNN) or ball query can capture the local neighborhood but ignores long-distance dependencies. A trainable neighborhood learning meth-od called TN-Learning is proposed, which can capture the global neighborhood. TN-Learning is combined with them to obtain richer neighborhood information. The other is information transfer convolution (IT-Conv) which can learn the structural information between two points and transfer features through it. Extensive exper-iments on idealized and non-idealized benchmarks across four tasks verify DNDFN achieves the state of the arts.
翻译:革命性神经网络在理想化点云的分类方面取得了显著成就,然而,非理想化点云的分类仍是一项艰巨的任务。在本文中,DNDFN,即双邻深融合网络,建议处理这一问题。DNDFN有两个关键点:一是地方邻居和全球邻居的结合。最近的邻居(kNN)或球质查询可以捕捉当地邻居,但忽视了长距离依赖性。提出了一个可训练的邻里学习迷幻药,称为TN-Learing,可以捕捉全球邻里。TN-Learning与它们相结合,以获取更丰富的邻里信息。另一个是信息传输(IT-Conv),可以通过它学习两个点之间的结构信息和传输特征。关于理想化和非理想化基准的大规模外延四大任务验证DNDFNFM达到艺术状态。