Publication | Closed Access
Improving Graph Representation for Point Cloud Segmentation via Attentive Filtering
59
Citations
42
References
2023
Year
Unknown Venue
Geometric LearningConvolutional Neural NetworkGraph ConvolutionsMachine LearningEngineeringPoint Cloud ProcessingGraph Signal ProcessingPoint CloudGraph ConvolutionImage AnalysisData SciencePoint Cloud SegmentationComputational GeometryGeometric ModelingMachine VisionComputer ScienceGraph Convolution NetworkDeep LearningComputer VisionGraph TheoryNatural SciencesGraph Neural NetworkImage Segmentation
Recently, self-attention networks achieve impressive performance in point cloud segmentation due to their superiority in modeling long-range dependencies. However, compared to self-attention mechanism, we find graph convolutions show a stronger ability in capturing local geometry information with less computational cost. In this paper, we employ a hybrid architecture design to construct our Graph Convolution Network with Attentive Filtering (AF-GCN), which takes advantage of both graph convolution and selfattention mechanism. We adopt graph convolutions to aggregate local features in the shallow encoder stages, while in the deeper stages, we propose a self-attention-like module named Graph Attentive Filter (GAF) to better model long-range contexts from distant neighbors. Besides, to further improve graph representation for point cloud segmentation, we employ a Spatial Feature Projection (SFP) module for graph convolutions which helps to handle spatial variations of unstructured point clouds. Finally, a graphshared down-sampling and up-sampling strategy is introduced to make full use of the graph structures in point cloud processing. We conduct extensive experiments on multiple datasets including S3DIS, ScanNetV2, Toronto-3D, and ShapeNetPart. Experimental results show our AF-GCN obtains competitive performance.
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