Recently, deep neural networks have made remarkable achievements in 3D point cloud classification. However, existing classification methods are mainly implemented on idealized point clouds and suffer heavy degradation of per-formance on non-idealized scenarios. To handle this prob-lem, a feature representation learning method, named Dual-Neighborhood Deep Fusion Network (DNDFN), is proposed to serve as an improved point cloud encoder for the task of non-idealized point cloud classification. DNDFN utilizes a trainable neighborhood learning method called TN-Learning to capture the global key neighborhood. Then, the global neighborhood is fused with the local neighbor-hood to help the network achieve more powerful reasoning ability. Besides, an Information Transfer Convolution (IT-Conv) is proposed for DNDFN to learn the edge infor-mation between point-pairs and benefits the feature transfer procedure. The transmission of information in IT-Conv is similar to the propagation of information in the graph which makes DNDFN closer to the human reasoning mode. Extensive experiments on existing benchmarks especially non-idealized datasets verify the effectiveness of DNDFN and DNDFN achieves the state of the arts.
翻译:最近,深心神经网络在3D点云分类方面取得了显著成就,然而,现有的分类方法主要是在理想化云层上实施,在非理想化的情景下,现有成形方法也严重退化。为了处理这种特征代表学习方法,即称为双邻深相融合网络(DNDFN),建议作为一种改进的点云编码器,用于非理想化点云分类任务。DNDFN采用称为TN-Learing的可训练社区学习方法,以捕捉全球关键社区。然后,全球邻里与当地邻里结合,帮助网络获得更强大的推理能力。此外,建议DNDFNFN(IT-Conv)采用信息传输(IT-Conv)方法,以了解点与特征传输程序之间的边缘。IT-ConDM的信息传输类似于图中的信息传播,使DNDFNFN更接近人类推理模式。对现有基准进行广泛的实验,特别是非理想化数据集,以核查DNDFAR和DNDGM的艺术的有效性。