| Submission name | |||||||||||
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| Submission time (UTC) | Oct. 11, 2022, 6:56 a.m. | ||||||||||
| User | Yang-hai | ||||||||||
| Task | Model-based 6D localization of seen objects | ||||||||||
| Dataset | ITODD | ||||||||||
| Training model type | Default | ||||||||||
| Training image type | Synthetic (only PBR images provided for BOP Challenge 2020 were used) | ||||||||||
| Description | |||||||||||
| Evaluation scores |
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| User | Yang-hai |
|---|---|
| Publication | Yang Hai et, al; Rigidity-Aware Detection for 6D Object Pose Estimation; Yinlin Hu et, at: Perspective Flow Aggregation for Data-Limited 6D Object Pose Estimation, ECCV, 2022 |
| Implementation | |
| Training image modalities | RGB |
| Test image modalities | RGB |
| Description | We train a single model for all objects on each dataset, and based on an architecture of object detection and pose regression. Object detection: extended FCOS Pose regression: extended PFA-Pose Data: PBR The Main differences from FCOS:
The main differences from the original PFA-Pose paper:
List of contributors: Yang Hai, Rui Song, Zhiqiang Liu, Jiaojiao Li (Xidian University) Mathieu Salzmann, Pascal Fua (EPFL) Yinlin Hu (Magic Leap) |
| Computer specifications | NVIDIA-3090 |