REGTR: End-to-end Point Cloud Correspondences with Transformers

National University of Singapore

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Abstract

Despite recent success in incorporating learning into point cloud registration, many works focus on learning feature descriptors and continue to rely on nearest-neighbor feature matching and outlier filtering through RANSAC to obtain the final set of correspondences for pose estimation. In this work, we conjecture that attention mechanisms can replace the role of explicit feature matching and RANSAC, and thus propose an end-to-end framework to directly predict the final set of correspondences. We use a network architecture consisting primarily of transformer layers containing self and cross attentions, and train it to predict the probability each point lies in the overlapping region and its corresponding…

Citation impact

247
total citations
FWCI
46.89
Percentile
100%
References
68
Citations per year

Authors

2

Topics & keywords

Keywords
  • RANSAC
  • Point cloud
  • Computer science
  • Outlier
  • Artificial intelligence
  • Transformer
  • Feature extraction
  • Feature (linguistics)
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