Dual-Neighborhood Feature Aggregation Network for Point Cloud Semantic Segmentation

Minghong Chen, Guanghui Zhang, Wenjun Shi, Dongchen Zhu, Xiaolin Zhang, Jiamao Li
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Abstract

Neighborhood construction plays a key role in point cloud processing. However, existing models only use a single neighborhood construction method to extract neighborhood features, which limits their scene understanding ability. In this paper, we propose a learnable Dual-Neighborhood Feature Aggregation (DNFA) module embedded in the encoder that builds and aggregates comprehensive surrounding knowledge of point clouds. In this module, we first construct two kinds of neighborhoods and design corresponding feature enhancement blocks, including a Basic Local Structure Encoding (BLSE) block and an Extended Context Encoding (ECE) block. The two blocks mine structural and contextual cues for enhancing neighborhood features, respectively. Second, we propose a Geometry-Aware Compound Aggregation (GACA) block, which introduces a functionally complementary compound pooling strategy to aggregate richer neighborhood features. To fully learn the neighborhood distribution, we absorb the geometric location information during the aggregation process. The proposed module is integrated into an MLP-based large-scale 3D processing architecture, which constitutes a 3D semantic segmentation network called DNFA-Net. Extensive experiments on public datasets containing indoor and outdoor scenes validate the superiority of DNFA-Net.
基于双邻域特征聚合网络的点云语义分割
邻域构建是点云处理的关键。然而,现有模型仅采用单一邻域构建方法提取邻域特征,限制了模型的场景理解能力。在本文中,我们提出了一个可学习的双邻域特征聚合(DNFA)模块嵌入到编码器中,用于构建和聚合点云的综合周围知识。在该模块中,我们首先构建了两种邻域,并设计了相应的特征增强块,包括基本局部结构编码(BLSE)块和扩展上下文编码(ECE)块。这两个街区分别挖掘结构和上下文线索来增强邻里特征。其次,我们提出了一种几何感知复合聚合(GACA)块,它引入了一种功能互补的复合池化策略来聚合更丰富的邻域特征。为了充分了解邻域分布,我们在聚合过程中吸收了几何位置信息。该模块集成到基于mlp的大规模三维处理体系结构中,构成了一个称为DNFA-Net的三维语义分割网络。在包含室内和室外场景的公共数据集上进行的大量实验验证了DNFA-Net的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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