JOURNAL ARTICLE

A Category-Contrastive Guided-Graph Convolutional Network Approach for the Semantic Segmentation of Point Clouds

Xuzhe WangJuntao YangZhizhong KangJunjian DuZhaotong TaoDan Qiao

Year: 2023 Journal:   IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing Vol: 16 Pages: 3715-3729   Publisher: Institute of Electrical and Electronics Engineers

Abstract

The semantic segmentation of light detection and ranging (LiDAR) point clouds plays an important role in 3-D scene intelligent perception and semantic modeling. The unstructured, sparse and uneven characteristics of point clouds pose great challenges to the representation of the local geometric shapes, which degrades semantic segmentation performance. To address the challenges of describing local geometric shapes due to unstructured and sparse 3-D point clouds, this article proposes a category-contrastive-guided graph convolutional network (CGGC-Net) for the semantic segmentation of LiDAR point clouds. First, a detailed geometric structure of the raw point clouds is encoded to represent the inherent geometric pattern within the local neighborhood. At the same time, the geometric structures information is transmitted across multiple layers, so that the geometric structure encoding information containing different receptive fields and richer neighborhood spatial structure can be aggregated. Following this, the graph convolution neural network uses the edge convolution layer to adaptively describe the semantic correlation between the query point and its neighboring points, and combines the attention mechanism to gather the surrounding feature information to the query point. As a result, the graph convolution neural network and attention mechanism are iteratively stacked for the aggregation and fusion of spatial context semantic information, to generate highly discriminative semantic feature representation. Finally, the superparameters of the model are learned through a multitask optimization strategy guided by category-aware contrastive loss and cross-entropy loss. Experiments are conducted on the public SemanticKITTI dataset and the Stanford large-scale 3-D Indoor Spaces dataset to demonstrate the effectiveness and reliability of the proposed CGGC-Net from both quantitative and qualitative perspectives. The results indicate its capability of automatically classifying LiDAR point clouds, with a mean intersection-over-union of 58.4%. Moreover, multiple comparative experiments also demonstrate the superior performance of the proposed method, exceeding state-of-the-art methods.

Keywords:
Computer science Point cloud Artificial intelligence Segmentation Convolutional neural network Pattern recognition (psychology) Discriminative model Graph Theoretical computer science

Metrics

5
Cited By
0.82
FWCI (Field Weighted Citation Impact)
67
Refs
0.64
Citation Normalized Percentile
Is in top 1%
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Citation History

Topics

Remote Sensing and LiDAR Applications
Physical Sciences →  Environmental Science →  Environmental Engineering
3D Shape Modeling and Analysis
Physical Sciences →  Engineering →  Computational Mechanics
3D Surveying and Cultural Heritage
Physical Sciences →  Earth and Planetary Sciences →  Geology
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