PANet: A Point-Attention Based Multi-Scale Feature Fusion Network for Point Cloud Registration

Point cloud registration is a critical task in many 3-D computer vision studies, aiming to find a rigid transformation that aligns one point cloud with another. In this article, we propose a point-attention based multi-scale feature fusion network (PANet) for partially overlapping point cloud regist...

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Veröffentlicht in:IEEE transactions on instrumentation and measurement 2023, Vol.72, p.1-13
Hauptverfasser: Wu, Yue, Yao, Qianlin, Fan, Xiaolong, Gong, Maoguo, Ma, Wenping, Miao, Qiguang
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Sprache:eng
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Zusammenfassung:Point cloud registration is a critical task in many 3-D computer vision studies, aiming to find a rigid transformation that aligns one point cloud with another. In this article, we propose a point-attention based multi-scale feature fusion network (PANet) for partially overlapping point cloud registration. This study aims to investigate whether multi-scale features are more effective in improving the precision of alignment compared with fixed-scale local features. PANet comprises two core components: a multi-branch feature extraction module that extracts local features at different scales in parallel and a point-attention module (PAM) that learns an appropriate weight for each branch and then fuse these multi-scale features by weighted combination to enhance the representation ability of features. At the end of the network, four hidden layers are used to obtain the rigid transformation from the source point cloud to the template point cloud. Experiments on the synthetic ModelNet40 dataset demonstrate that the PANet outperforms state-of-the-art performance in terms of both alignment precision and robustness against noise. PANet also exhibits strong generalization ability on real-world Stanford 3-D and ICL-NUIM datasets. In addition, the computational complexity of our model compared to previous works is also evaluated. The results and ablation studies demonstrate that multi-scale fused local features are better at improving registration accuracy than fixed-scale local features. The findings may inspire future research in related fields and contribute to the development of new ideas and approaches.
ISSN:0018-9456
1557-9662
DOI:10.1109/TIM.2023.3271757