Publication | Open Access
Dilated Point Convolutions: On the Receptive Field of Point Convolutions
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2019
Year
EngineeringMachine LearningPoint Cloud ProcessingPoint Cloud3D Computer VisionImage AnalysisData SciencePattern RecognitionComputational ImagingComputational GeometryVision RecognitionDilated Point ConvolutionsMachine VisionInverse ProblemsComputer ScienceDeep Learning3D Object RecognitionComputer VisionPoint ConvolutionsDilation Mechanism3D VisionComputer Stereo VisionScene UnderstandingStereoscopic ProcessingScene Modeling
In this work, we propose Dilated Point Convolutions (DPC). In a thorough ablation study, we show that the receptive field size is directly related to the performance of 3D point cloud processing tasks, including semantic segmentation and object classification. Point convolutions are widely used to efficiently process 3D data representations such as point clouds or graphs. However, we observe that the receptive field size of recent point convolutional networks is inherently limited. Our dilated point convolutions alleviate this issue, they significantly increase the receptive field size of point convolutions. Importantly, our dilation mechanism can easily be integrated into most existing point convolutional networks. To evaluate the resulting network architectures, we visualize the receptive field and report competitive scores on popular point cloud benchmarks.