This paper extensively investigates the robustness of existing RGBD-based 6DoF pose estimation methods against varying levels of depth sensor noise and presents a simple and effective transformer-based 6DoF pose estimation approach called DTTDNet, setting a new benchmark for robustness to measurement noise.
Robust 6DoF pose estimation with mobile devices is the foundation for applications in robotics, augmented reality, and digital twin localization. In this paper, we extensively investigate the robustness of existing RGBD-based 6DoF pose estimation methods against varying levels of depth sensor noise. We highlight that existing 6DoF pose estimation methods suffer significant performance discrepancies due to depth measurement inaccuracies. In response to the robustness issue, we present a simple and effective transformer-based 6DoF pose estimation approach called DTTDNet11This work was previously presented as a non-archival poster at the 2024 ICML DMLR Workshop. This submission does not overlap with any archival publications., featuring a novel geometric feature filtering module and a Chamfer distance loss for training. Moreover, we advance the field of robust 6DoF pose estimation and introduce a new dataset - Digital Twin Tracking Dataset Mobile (DTTD-Mobile), tailored for digital twin object tracking with noisy depth data from the mobile RGBD sensor suite of the Apple iPhone 14 Pro. Extensive experiments demonstrate that DTTDNet significantly outperforms state-of-the-art methods at least 4.32, up to 60.74 points in $A D D$ metrics on the DTTD-Mobile. More importantly, our approach exhibits superior robustness to varying levels of measurement noise, setting a new benchmark for robustness to measurement noise. The project page is publicly available at https://openark-berkeley.github.io/DTTDNet/.
Zixun Huang
1 papers
Keling Yao
1 papers
Tianjian Xu
1 papers
Allen Y. Yang
1 papers