Background-Aware 3D Point Cloud Segmentationwith Dynamic Point Feature
Aggregation
- URL: http://arxiv.org/abs/2111.07248v1
- Date: Sun, 14 Nov 2021 05:46:05 GMT
- Title: Background-Aware 3D Point Cloud Segmentationwith Dynamic Point Feature
Aggregation
- Authors: Jiajing Chen, Burak Kakillioglu, Senem Velipasalar
- Abstract summary: We propose a novel 3D point cloud learning network, referred to as Dynamic Point Feature Aggregation Network (DPFA-Net)
DPFA-Net has two variants for semantic segmentation and classification of 3D point clouds.
It achieves the state-of-the-art overall accuracy score for semantic segmentation on the S3DIS dataset.
- Score: 12.093182949686781
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the proliferation of Lidar sensors and 3D vision cameras, 3D point cloud
analysis has attracted significant attention in recent years. After the success
of the pioneer work PointNet, deep learning-based methods have been
increasingly applied to various tasks, including 3D point cloud segmentation
and 3D object classification. In this paper, we propose a novel 3D point cloud
learning network, referred to as Dynamic Point Feature Aggregation Network
(DPFA-Net), by selectively performing the neighborhood feature aggregation with
dynamic pooling and an attention mechanism. DPFA-Net has two variants for
semantic segmentation and classification of 3D point clouds. As the core module
of the DPFA-Net, we propose a Feature Aggregation layer, in which features of
the dynamic neighborhood of each point are aggregated via a self-attention
mechanism. In contrast to other segmentation models, which aggregate features
from fixed neighborhoods, our approach can aggregate features from different
neighbors in different layers providing a more selective and broader view to
the query points, and focusing more on the relevant features in a local
neighborhood. In addition, to further improve the performance of the proposed
semantic segmentation model, we present two novel approaches, namely Two-Stage
BF-Net and BF-Regularization to exploit the background-foreground information.
Experimental results show that the proposed DPFA-Net achieves the
state-of-the-art overall accuracy score for semantic segmentation on the S3DIS
dataset, and provides a consistently satisfactory performance across different
tasks of semantic segmentation, part segmentation, and 3D object
classification. It is also computationally more efficient compared to other
methods.
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