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Communication Dans Un Congrès Année : 2022

COARSE3D: Class-Prototypes for Contrastive Learning in Weakly-Supervised 3D Point Cloud Segmentation

Résumé

Annotation of large-scale 3D data is notoriously cumbersome and costly. As an alternative, weakly-supervised learning alleviates such a need by reducing the annotation by several order of magnitudes. We propose COARSE3D, a novel architecture-agnostic contrastive learning strategy for 3D segmentation. Since contrastive learning requires rich and diverse examples as keys and anchors, we leverage a prototype memory bank capturing class-wise global dataset information efficiently into a small number of prototypes acting as keys. An entropy-driven sampling technique then allows us to select good pixels from predictions as anchors. Experiments on three projection-based backbones show we outperform baselines on three challenging real-world outdoor datasets, working with as low as 0.001% annotations.
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Dates et versions

hal-03805899 , version 1 (07-10-2022)
hal-03805899 , version 2 (18-01-2023)

Identifiants

  • HAL Id : hal-03805899 , version 2

Citer

Rong Li, Anh-Quan Cao, Raoul de Charette. COARSE3D: Class-Prototypes for Contrastive Learning in Weakly-Supervised 3D Point Cloud Segmentation. British Machine Vision Conference (BMVC), Nov 2022, London, United Kingdom. ⟨hal-03805899v2⟩
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