Abstract:
The structural similarity of point clouds presents challenges in accurately recognizing and segmenting semantic information at the demarcation points of complex scenes or...Show MoreMetadata
Abstract:
The structural similarity of point clouds presents challenges in accurately recognizing and segmenting semantic information at the demarcation points of complex scenes or objects. In this study, we propose a multi-scale graph transformer network (MGTN) for 3D point cloud semantic segmentation. First, a multi-scale graph convolution (MSG-Conv) is devised to address the limitations faced by existing methods when extracting local and global features of point cloud data with varying densities simultaneously. Subsequently, we employ a graph-transformer (G-T) module to enhance edge details and spatial position information in the point cloud, thereby improving recognition accuracy for small objects and confusing elements such as columns and beams. Extensive testing on ShapeNet parts and S3DIS datasets was conducted to demonstrate the effectiveness of MGTN. Compared to the baseline network DGCNN, our proposed MGTN achieves substantial performance improvements, as evidenced by notable increases in mIoU of 1.5% and 18.5% on the ShapeNet parts and S3DIS datasets respectively. Additionally, MGTN outperforms the recent CFSA- Net by 2.3% and 3.4% on OA and mIoU respectively.
Published in: 2024 IEEE International Conference on Visual Communications and Image Processing (VCIP)
Date of Conference: 08-11 December 2024
Date Added to IEEE Xplore: 27 January 2025
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ISSN Information:
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- IEEE Keywords
- Index Terms
- Point Cloud ,
- Semantic Segmentation ,
- 3D Point Cloud ,
- Multi-scale Network ,
- Semantic Segmentation Network ,
- Graph Transformation ,
- Point Cloud Semantic Segmentation ,
- Multiscale Graph ,
- Global Features ,
- Semantic Information ,
- Point Cloud Data ,
- Graph Convolution ,
- Edge Details ,
- Spatial Features ,
- Feature Representation ,
- K-nearest Neighbor ,
- Conditional Probability ,
- Receptive Field ,
- Geometric Features ,
- Feature Points ,
- Edge Features ,
- Improve Segmentation Accuracy ,
- Minority Category ,
- Boundary Features ,
- Segmentation Accuracy ,
- Accurate Segmentation Results ,
- Multi-scale Features ,
- Segmentation Results ,
- Edge Region ,
- Scene Point
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Point Cloud ,
- Semantic Segmentation ,
- 3D Point Cloud ,
- Multi-scale Network ,
- Semantic Segmentation Network ,
- Graph Transformation ,
- Point Cloud Semantic Segmentation ,
- Multiscale Graph ,
- Global Features ,
- Semantic Information ,
- Point Cloud Data ,
- Graph Convolution ,
- Edge Details ,
- Spatial Features ,
- Feature Representation ,
- K-nearest Neighbor ,
- Conditional Probability ,
- Receptive Field ,
- Geometric Features ,
- Feature Points ,
- Edge Features ,
- Improve Segmentation Accuracy ,
- Minority Category ,
- Boundary Features ,
- Segmentation Accuracy ,
- Accurate Segmentation Results ,
- Multi-scale Features ,
- Segmentation Results ,
- Edge Region ,
- Scene Point
- Author Keywords