In this paper,we propose a novel and effective approach,namely GridNet,to hierarchically learn deep representation of 3D point clouds.It incorporates the ability of regular holistic description and fast data processin...In this paper,we propose a novel and effective approach,namely GridNet,to hierarchically learn deep representation of 3D point clouds.It incorporates the ability of regular holistic description and fast data processing in a single framework,which is able to abstract powerful features progressively in an efficient way.Moreover,to capture more accurate internal geometry attributes,anchors are inferred within local neighborhoods,in contrast to the fixed or the sampled ones used in existing methods,and the learned features are thus more representative and discriminative to local point distribution.GridNet delivers very competitive results compared with the state of the art methods in both the object classification and segmentation tasks.展开更多
基金This work was supported by the National Natural Science Foundation of China(Grant No.61673033).
文摘In this paper,we propose a novel and effective approach,namely GridNet,to hierarchically learn deep representation of 3D point clouds.It incorporates the ability of regular holistic description and fast data processing in a single framework,which is able to abstract powerful features progressively in an efficient way.Moreover,to capture more accurate internal geometry attributes,anchors are inferred within local neighborhoods,in contrast to the fixed or the sampled ones used in existing methods,and the learned features are thus more representative and discriminative to local point distribution.GridNet delivers very competitive results compared with the state of the art methods in both the object classification and segmentation tasks.