Robust 6-DoF Pose Estimation under Hybrid Constraints
H. Ren; L. Lin; Y. J. Wang and X. Dong
刊名Sensors
2022
卷号22期号:22页码:20
DOI10.3390/s22228758
英文摘要To solve the problem of the insufficient accuracy and stability of the two-stage pose estimation algorithm using heatmap in the problem of occluded object pose estimation, a new robust 6-DoF pose estimation algorithm under hybrid constraints is proposed in this paper. First, a new loss function suitable for heatmap regression is formulated to improve the quality of the predicted heatmaps and increase keypoint accuracy in complex scenes. Second, the heatmap regression network is expanded and a translation regression branch is added to constrain the pose further. Finally, a robust pose optimization module is used to fuse the heatmap and translation estimates and improve the pose estimation accuracy. The proposed algorithm achieves ADD(-S) accuracy rates of 93.5% and 46.2% on the LINEMOD dataset and the Occlusion LINEMOD dataset, which are better than other state-of-the-art algorithms. Compared with the conventional two-stage heatmap-based pose estimation algorithms, the mean estimation error is greatly reduced, and the stability of pose estimation is improved. The proposed algorithm can run at a maximum speed of 22 FPS, thus constituting both a performant and efficient method.
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语种英语
内容类型期刊论文
源URL[http://ir.ciomp.ac.cn/handle/181722/67066]  
专题中国科学院长春光学精密机械与物理研究所
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GB/T 7714
H. Ren,L. Lin,Y. J. Wang and X. Dong. Robust 6-DoF Pose Estimation under Hybrid Constraints[J]. Sensors,2022,22(22):20.
APA H. Ren,L. Lin,&Y. J. Wang and X. Dong.(2022).Robust 6-DoF Pose Estimation under Hybrid Constraints.Sensors,22(22),20.
MLA H. Ren,et al."Robust 6-DoF Pose Estimation under Hybrid Constraints".Sensors 22.22(2022):20.
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