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Real-Time 3-D Semantic Scene Parsing With LiDAR Sensors | IEEE Journals & Magazine | IEEE Xplore

Real-Time 3-D Semantic Scene Parsing With LiDAR Sensors


Abstract:

This article proposes a novel deep-learning framework, called RSSP, for real-time 3-D scene understanding with LiDAR sensors. To this end, we introduce new sparse strided...Show More

Abstract:

This article proposes a novel deep-learning framework, called RSSP, for real-time 3-D scene understanding with LiDAR sensors. To this end, we introduce new sparse strided operations based on the sparse tensor representation of point clouds. Compared with conventional convolution operations, the time and space complexity of our sparse strided operations are proportional to the number of occupied voxels {N} rather than the input spatial size {r} ^{3} (often N \ll r 3 for LiDAR data). This enables our method to process point clouds at high resolutions (e.g., 20483) with a high speed (130 ms for classifying a single frame from Velodyne HDL-64). The main structure includes a CNN model built upon our sparse strided operations and a conditional random field (CRF) model to impose spatial consistency on the final predictions. A highly parallel implementation of our system is presented for both CPU-GPU and CPU-only environments. The efficiency and effectiveness of our approach are demonstrated on two public datasets (Semantic3D.net and KITTI). The experimental results and benchmark tests show that our system can be effectively applied for online 3-D data analyses with comparable or better accuracy than the state-of-the-art methods.
Published in: IEEE Transactions on Cybernetics ( Volume: 52, Issue: 3, March 2022)
Page(s): 1351 - 1363
Date of Publication: 20 April 2020

ISSN Information:

PubMed ID: 32310814

Funding Agency:

Citations are not available for this document.

I. Introduction

These days, LiDAR sensors have become the standard equipment on mobile robotic platforms, making point clouds of millions or even hundreds of millions of points a common place. The ability to handle such large-scale point clouds in real time is critical to many robotic tasks, such as localization [1], object detection [2], and navigation [3]. This becomes even more challenging for robots with very limited computational resources.

Cites in Papers - |

Cites in Papers - IEEE (6)

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1.
Zonghan Cao, Ting Wang, Ping Sun, Fengkui Cao, Shiliang Shao, Shaocong Wang, "ScorePillar: A Real-Time Small Object Detection Method Based on Pillar Scoring of Lidar Measurement", IEEE Transactions on Instrumentation and Measurement, vol.73, pp.1-13, 2024.
2.
Fei Wang, Zhao Wu, Yujie Yang, Wanyu Li, Yisha Liu, Yan Zhuang, "Real-Time Semantic Segmentation of LiDAR Point Clouds on Edge Devices for Unmanned Systems", IEEE Transactions on Instrumentation and Measurement, vol.72, pp.1-11, 2023.
3.
Kangcheng Liu, Zhi Gao, Feng Lin, Ben M. Chen, "FG-Net: A Fast and Accurate Framework for Large-Scale LiDAR Point Cloud Understanding", IEEE Transactions on Cybernetics, vol.53, no.1, pp.553-564, 2023.
4.
Guojian He, Qinhan Zhang, Yan Zhuang, "Online Semantic-Assisted Topological Map Building With LiDAR in Large-Scale Outdoor Environments: Toward Robust Place Recognition", IEEE Transactions on Instrumentation and Measurement, vol.71, pp.1-12, 2022.
5.
Yan Wang, Yining Zhao, Shihui Ying, Shaoyi Du, Yue Gao, "Rotation-Invariant Point Cloud Representation for 3-D Model Recognition", IEEE Transactions on Cybernetics, vol.52, no.10, pp.10948-10956, 2022.
6.
Kangcheng Liu, Zhi Gao, Feng Lin, Ben M. Chen, "FG-Conv: Large-Scale LiDAR Point Clouds Understanding Leveraging Feature Correlation Mining and Geometric-Aware Modeling", 2021 IEEE International Conference on Robotics and Automation (ICRA), pp.12896-12902, 2021.

Cites in Papers - Other Publishers (2)

1.
Weipeng Jing, Wenjun Zhang, Linhui Li, Donglin Di, Guangsheng Chen, Jian Wang, "AGNet: An Attention-Based Graph Network for Point Cloud Classification and Segmentation", Remote Sensing, vol.14, no.4, pp.1036, 2022.
2.
Jianjun Zou, Zhenxin Zhang, Dong Chen, Qinghua Li, Lan Sun, Ruofei Zhong, Liqiang Zhang, Jinghan Sha, "GACM: A Graph Attention Capsule Model for the Registration of TLS Point Clouds in the Urban Scene", Remote Sensing, vol.13, no.22, pp.4497, 2021.
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References

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