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Articles

Vol. 10 No. 4 (2023)

3D Point Cloud Semantic Segmentation Based PAConv and SE_variant

DOI
https://doi.org/10.15878/j.cnki.instrumentation.2023.04.001
Submitted
January 19, 2024
Published
2023-12-15

Abstract

With the increasing popularity of 3D sensors (e.g., Kinect) and light field cameras, technologies such as driv-erless, smart home and virtual reality have become hot spots for engineering applications. As an important part of 3D vision tasks, point cloud semantic segmentation has received a lot of attention from researchers. In this work, we focus on realistically collected indoor point cloud data and propose a point cloud semantic segmen-tation method based on PAConv and SE_variant. The SE_variant module captures global perception from a broad perspective of feature space by fusing different pooling methods, which fully utilize the channel in-formation of point clouds. The effectiveness of the method is verified by comparing with other methods on S3DIS and ScanNetV2 semantic tagging benchmarks, and achieving 65.3% mIoU in S3DIS, 47.6% mIoU in ScanNetV2. The results of the ablation experiments verify the effectiveness of the key modules and analyze how to use the attention mechanism to improve the 3D semantic segmentation performance.

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