Point Cloud Classification Network Based on Graph Convolution and Fusion Attention Mechanism

Song, Tengteng and Li, Zhao and Liu, Zhenguo and He, Yizhi (2022) Point Cloud Classification Network Based on Graph Convolution and Fusion Attention Mechanism. Journal of Computer and Communications, 10 (09). pp. 81-95. ISSN 2327-5219

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Abstract

The classification of point cloud data is the key technology of point cloud data information acquisition and 3D reconstruction, which has a wide range of applications. However, the existing point cloud classification methods have some shortcomings when extracting point cloud features, such as insufficient extraction of local information and overlooking the information in other neighborhood features in the point cloud, and not focusing on the point cloud channel information and spatial information. To solve the above problems, a point cloud classification network based on graph convolution and fusion attention mechanism is proposed to achieve more accurate classification results. Firstly, the point cloud is regarded as a node on the graph, the k-nearest neighbor algorithm is used to compose the graph and the information between points is dynamically captured by stacking multiple graph convolution layers; then, with the assistance of 2D experience of attention mechanism, an attention mechanism which has the capability to integrate more attention to point cloud spatial and channel information is introduced to increase the feature information of point cloud, aggregate local useful features and suppress useless features. Through the classification experiments on ModelNet40 dataset, the experimental results show that compared with PointNet network without considering the local feature information of the point cloud, the average classification accuracy of the proposed model has a 4.4% improvement and the overall classification accuracy has a 4.4% improvement. Compared with other networks, the classification accuracy of the proposed model has also been improved.

Item Type: Article
Subjects: Apsci Archives > Computer Science
Depositing User: Unnamed user with email support@apsciarchives.com
Date Deposited: 29 Apr 2023 04:59
Last Modified: 15 Jan 2024 04:23
URI: http://eprints.go2submission.com/id/eprint/852

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