Bidirectional Feature Globalization for Few-shot Semantic Segmentation of 3D Point Cloud Scenes
Few-shot segmentation of point cloud remains a challenging task, as there is no effective way to convert local point cloud information to global representation, which hinders the generalization ability of point features. In this study, we propose a bidirectional feature globalization (BFG) approach,...
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Zusammenfassung: | Few-shot segmentation of point cloud remains a challenging task, as there is
no effective way to convert local point cloud information to global
representation, which hinders the generalization ability of point features. In
this study, we propose a bidirectional feature globalization (BFG) approach,
which leverages the similarity measurement between point features and prototype
vectors to embed global perception to local point features in a bidirectional
fashion. With point-to-prototype globalization (Po2PrG), BFG aggregates local
point features to prototypes according to similarity weights from dense point
features to sparse prototypes. With prototype-to-point globalization (Pr2PoG),
the global perception is embedded to local point features based on similarity
weights from sparse prototypes to dense point features. The sparse prototypes
of each class embedded with global perception are summarized to a single
prototype for few-shot 3D segmentation based on the metric learning framework.
Extensive experiments on S3DIS and ScanNet demonstrate that BFG significantly
outperforms the state-of-the-art methods. |
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DOI: | 10.48550/arxiv.2208.06671 |