Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun 130033, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2022 Nov 12;22(22):8758. doi: 10.3390/s22228758.
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.
为了解决基于热图的两阶段姿态估计算法在遮挡物体姿态估计问题中精度和稳定性不足的问题,本文提出了一种新的混合约束下的鲁棒 6-DoF 姿态估计算法。首先,提出了一种新的适合热图回归的损失函数,以提高预测热图的质量,并在复杂场景中提高关键点的准确性。其次,扩展了热图回归网络,并添加了一个平移回归分支,以进一步约束姿态。最后,使用鲁棒姿态优化模块融合热图和平移估计,提高姿态估计的准确性。所提出的算法在 LINEMOD 数据集和 Occlusion LINEMOD 数据集上的 ADD(-S)准确率分别达到 93.5%和 46.2%,优于其他最先进的算法。与传统的基于两阶段热图的姿态估计算法相比,平均估计误差大大降低,姿态估计的稳定性得到提高。所提出的算法可以以最大 22 FPS 的速度运行,因此构成了一种高性能且高效的方法。