TY - JOUR
T1 - A Parameters optimization framework for pose estimation algorithm based on point cloud
AU - Niu, Qun
AU - Wang, Ziru
AU - Li, Hongkun
AU - Zhao, Jieliang
N1 - Publisher Copyright:
© Published under licence by IOP Publishing Ltd.
PY - 2024
Y1 - 2024
N2 - Pose estimation using point cloud data is pivotal in robotics. Despite the myriad of algorithms developed for this task, their efficiency is often contingent on optimal parameter settings. Parameters adjustment is a process that traditionally relies on extensive experience and deep understanding of the underlying algorithm. This manual, experience-driven process can hamper the adaptability and performance of pose estimation algorithms. Addressing this limitation, this paper proposes a novel framework for parameter optimization tailored to pose estimation algorithms. The framework introduces an objective function based on pose error, designed to enhance both the algorithm's number of results and the accuracy. The methodology requires the object model and several scene point clouds with real poses of the objects.By synergistically integrating this objective function with various sampling and pruning algorithms to optimize the pose estimate algorithm, obtaining a set of superior parameters to replace default values becomes a straightforward process. Experimental assessments were conducted on the pose estimation algorithm implemented in Halcon, considering two types of objects within the Industrial 3D Object Detection Dataset (ITODD). The experimental results shown that the number and accuracy of matching results for optimized parameters are better than those proposed by algorithm developers. This not only underscores the framework's potential as an alternative to conventional manual parameter tuning but also its utility as a foundational configuration for further refinements. Ultimately, the methodology augments the foundational efficiency and versatility of pose estimation algorithms, paving the way for more adept robotic interactions with a myriad of objects.
AB - Pose estimation using point cloud data is pivotal in robotics. Despite the myriad of algorithms developed for this task, their efficiency is often contingent on optimal parameter settings. Parameters adjustment is a process that traditionally relies on extensive experience and deep understanding of the underlying algorithm. This manual, experience-driven process can hamper the adaptability and performance of pose estimation algorithms. Addressing this limitation, this paper proposes a novel framework for parameter optimization tailored to pose estimation algorithms. The framework introduces an objective function based on pose error, designed to enhance both the algorithm's number of results and the accuracy. The methodology requires the object model and several scene point clouds with real poses of the objects.By synergistically integrating this objective function with various sampling and pruning algorithms to optimize the pose estimate algorithm, obtaining a set of superior parameters to replace default values becomes a straightforward process. Experimental assessments were conducted on the pose estimation algorithm implemented in Halcon, considering two types of objects within the Industrial 3D Object Detection Dataset (ITODD). The experimental results shown that the number and accuracy of matching results for optimized parameters are better than those proposed by algorithm developers. This not only underscores the framework's potential as an alternative to conventional manual parameter tuning but also its utility as a foundational configuration for further refinements. Ultimately, the methodology augments the foundational efficiency and versatility of pose estimation algorithms, paving the way for more adept robotic interactions with a myriad of objects.
UR - http://www.scopus.com/inward/record.url?scp=85195153057&partnerID=8YFLogxK
U2 - 10.1088/1742-6596/2746/1/012039
DO - 10.1088/1742-6596/2746/1/012039
M3 - Conference article
AN - SCOPUS:85195153057
SN - 1742-6588
VL - 2746
JO - Journal of Physics: Conference Series
JF - Journal of Physics: Conference Series
IS - 1
M1 - 012039
T2 - 14th Asia Conference on Mechanical and Aerospace Engineering, ACMAE 2023
Y2 - 22 December 2023 through 24 December 2023
ER -