Garments are important to humans. A visual system that can estimate and track the complete garment pose can be useful for many downstream tasks and real-world applications. In this work, we present a complete package to address the category-level garment pose tracking task: (1) A recording system VR-Garment, with which users can manipulate virtual garment models in simulation through a VR interface. (2) A large-scale dataset VR-Folding, with complex garment pose configurations in manipulation like flattening and folding. (3) An end-to-end online tracking framework GarmentTracking, which predicts complete garment pose both in canonical space and task space given a point cloud sequence. Extensive experiments demonstrate that the proposed GarmentTracking achieves great performance even when the garment has large non-rigid deformation. It outperforms the baseline approach on both speed and accuracy. We hope our proposed solution can serve as a platform for future research. Codes and datasets are available in https://garment-tracking.robotflow.ai.
GarmentTracking: Category-Level Garment Pose Tracking
An end-to-end garment pose tracking framework is presented, capable of handling complex non-rigid deformations and outperforming existing methods in terms of speed and accuracy.
- Year
- 2023
- Venue
- CVPR 2023 1
- Authors
- 8
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2303.13913v2ARXIV-DEFAULT
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