Point Cloud Completion Based on Nonlocal Neural Networks with Adaptive Sampling

Authors

  • Na Xing School of Information, North China University of Technology, No. 5, Jinyuanzhuang Road, Shijingshan District, Beijing, China
  • Jun Wang School of Information, North China University of Technology, No. 5, Jinyuanzhuang Road, Shijingshan District, Beijing, China
  • Yuehai Wang School of Information, North China University of Technology, No. 5, Jinyuanzhuang Road, Shijingshan District, Beijing, China
  • Keqing Ning North China University of Technology
  • Fuqiang Chen School of Information, North China University of Technology, No. 5, Jinyuanzhuang Road, Shijingshan District, Beijing, China

DOI:

https://doi.org/10.5755/j01.itc.53.1.34047

Keywords:

Point Cloud Completion, Nonlocal Neural Network, Adaptive Sampling

Abstract

Raw point clouds are usually sparse and incomplete, inevitably containing outliers or noise from 3D sensors. In this paper, an improved SA-Net based on an encoder-decoder structure is proposed to make it more robust in predicting complete point clouds. The encoder of the original SA-Net network is very sensitive to noise in the feature extraction process. Therefore, we use PointASNL as the encoder, which weights around the initial sampling points through the AS module (Adaptive Sampling Module) and adaptively adjusts the weight of the sampling points to effectively alleviate the bias effect of outliers. In order to fully mine the feature information of point clouds, it captures the neighborhood and long-distance dependencies of sampling points through the LNL module (Local-NonLocal Module), providing more accurate information for point cloud processing. Then, we use the encoder to extract local geometric features of the incomplete point cloud at different resolutions.Then, an attention mechanism is introduced to transfer the extracted features to a decoder. The decoder gradually refines the local features to achieve a more realistic effect. Experiments on the ShapeNet data set show that the improved point cloud completion network achieves the goal and reduces the average chamfer distance by 3.50% compared to SA-Net.

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Published

2024-03-22

Issue

Section

Articles