PAPooling: Graph-based Position Adaptive Aggregation of Local Geometry in Point Clouds

11/28/2021
by   Jie Wang, et al.
0

Fine-grained geometry, captured by aggregation of point features in local regions, is crucial for object recognition and scene understanding in point clouds. Nevertheless, existing preeminent point cloud backbones usually incorporate max/average pooling for local feature aggregation, which largely ignores points' positional distribution, leading to inadequate assembling of fine-grained structures. To mitigate this bottleneck, we present an efficient alternative to max pooling, Position Adaptive Pooling (PAPooling), that explicitly models spatial relations among local points using a novel graph representation, and aggregates features in a position adaptive manner, enabling position-sensitive representation of aggregated features. Specifically, PAPooling consists of two key steps, Graph Construction and Feature Aggregation, respectively in charge of constructing a graph with edges linking the center point with every neighboring point in a local region to map their relative positional information to channel-wise attentive weights, and adaptively aggregating local point features based on the generated weights through Graph Convolution Network (GCN). PAPooling is simple yet effective, and flexible enough to be ready to use for different popular backbones like PointNet++ and DGCNN, as a plug-andplay operator. Extensive experiments on various tasks ranging from 3D shape classification, part segmentation to scene segmentation well demonstrate that PAPooling can significantly improve predictive accuracy, while with minimal extra computational overhead. Code will be released.

READ FULL TEXT

page 1

page 4

page 7

research
08/29/2019

Point2SpatialCapsule: Aggregating Features and Spatial Relationships of Local Regions on Point Clouds using Spatial-aware Capsules

Learning discriminative shape representation directly on point clouds is...
research
03/15/2018

Local Spectral Graph Convolution for Point Set Feature Learning

Feature learning on point clouds has shown great promise, with the intro...
research
08/31/2023

Decoupled Local Aggregation for Point Cloud Learning

The unstructured nature of point clouds demands that local aggregation b...
research
07/28/2019

DAR-Net: Dynamic Aggregation Network for Semantic Scene Segmentation

Traditional grid/neighbor-based static pooling has become a constraint f...
research
03/18/2020

LRC-Net: Learning Discriminative Features on Point Clouds by Encoding Local Region Contexts

Learning discriminative feature directly on point clouds is still challe...
research
12/19/2017

Neighbors Do Help: Deeply Exploiting Local Structures of Point Clouds

Unlike on images, semantic learning on 3D point clouds using a deep netw...
research
03/28/2021

Exploiting Local Geometry for Feature and Graph Construction for Better 3D Point Cloud Processing with Graph Neural Networks

We propose simple yet effective improvements in point representations an...

Please sign up or login with your details

Forgot password? Click here to reset