Abstract:
3D point cloud is often affected by sensor noise, environmental interference, and incomplete collection, resulting in noise, missing, and anomalies in the point cloud. Ex...Show MoreMetadata
Abstract:
3D point cloud is often affected by sensor noise, environmental interference, and incomplete collection, resulting in noise, missing, and anomalies in the point cloud. Existing work in handling such data primarily focuses on the coordinate information of the point cloud, overlooking its local structure and the interrelation between points, thereby reducing the accuracy of model predictions. To enhance the ability to capture point cloud features, we propose a high-precision and robust 3D point cloud analysis model called PointMLFF. Specifically, we introduce a 3D surface-based point local feature extractor, capturing the local geometric features of the point cloud by approximating the Taylor series to construct local spatial geometries. This method preserves both the absolute position information and the local shape information of the point cloud. Additionally, we propose a multi-level key-point attention module based on deep features, which constructs a point embedding space capable of perceiving abnormal changes in the point cloud by calculating the key-neighbor point attention and inter-key point attention in the feature space, significantly improving the model’s robustness. Extensive experiments show that PointMLFF outperforms most advanced methods in various downstream tasks. Notably, our method achieves a high classification accuracy of 88.9% on the challenging ScanObjectNN and surpasses others on abnormal point clouds. The visualization of partial segmentation results closely resembles the actual scenarios.
Date of Conference: 30 June 2024 - 05 July 2024
Date Added to IEEE Xplore: 09 September 2024
ISBN Information:
ISSN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Point Cloud ,
- Multi-level Features ,
- Point Cloud Analysis ,
- Multilevel Feature Fusion ,
- Local Information ,
- Local Features ,
- Local Structure ,
- Feature Space ,
- Geometric Features ,
- Taylor Series ,
- Deep Features ,
- 3D Point ,
- Abnormal Changes ,
- 3D Features ,
- Absolute Position ,
- 3D Point Cloud ,
- Sensor Noise ,
- Environmental Interference ,
- Incomplete Collection ,
- Point Cloud Features ,
- Global Correlation ,
- Neighboring Points ,
- Local Correlation ,
- 3D Point Cloud Data ,
- Point Cloud Data ,
- Local Point ,
- Original Point Cloud ,
- Voting Scheme ,
- Residual Module ,
- K-nearest Neighbor
- 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 ,
- Multi-level Features ,
- Point Cloud Analysis ,
- Multilevel Feature Fusion ,
- Local Information ,
- Local Features ,
- Local Structure ,
- Feature Space ,
- Geometric Features ,
- Taylor Series ,
- Deep Features ,
- 3D Point ,
- Abnormal Changes ,
- 3D Features ,
- Absolute Position ,
- 3D Point Cloud ,
- Sensor Noise ,
- Environmental Interference ,
- Incomplete Collection ,
- Point Cloud Features ,
- Global Correlation ,
- Neighboring Points ,
- Local Correlation ,
- 3D Point Cloud Data ,
- Point Cloud Data ,
- Local Point ,
- Original Point Cloud ,
- Voting Scheme ,
- Residual Module ,
- K-nearest Neighbor
- Author Keywords