PCKRF: Point Cloud Completion and Keypoint Refinement With Fusion Data for 6D Pose Estimation

Yiheng Han;Irvin Haozhe Zhan;Long Zeng;Yu-Ping Wang;Ran Yi;Minjing Yu;Matthieu Gaetan Lin;Jenny Sheng;Yong-Jin Liu
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Abstract

Some robust point cloud registration approaches with controllable pose refinement magnitude, such as ICP and its variants, are commonly used to improve 6D pose estimation accuracy. However, the effectiveness of these methods gradually diminishes with the advancement of deep learning techniques and the enhancement of initial pose accuracy, primarily due to their lack of specific design for pose refinement. In this paper, we propose Point Cloud Completion and Keypoint Refinement with Fusion Data (PCKRF), a new pose refinement pipeline for 6D pose estimation. The pipeline consists of two steps. First, it completes the input point clouds via a novel pose-sensitive point completion network. The network uses both local and global features with pose information during point completion. Then, it registers the completed object point cloud with the corresponding target point cloud by our proposed Color supported Iterative KeyPoint (CIKP) method. The CIKP method introduces color information into registration and registers a point cloud around each keypoint to increase stability. The PCKRF pipeline can be integrated with existing popular 6D pose estimation methods, such as the full flow bidirectional fusion network, to further improve their pose estimation accuracy. Experiments demonstrate that our method exhibits superior stability compared to existing approaches when optimizing initial poses with relatively high precision. Notably, the results indicate that our method effectively complements most existing pose estimation techniques, leading to improved performance in most cases. Furthermore, our method achieves promising results even in challenging scenarios involving textureless and symmetrical objects.
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PCKRF: 利用融合数据完成点云和关键点细化,实现 6D 姿势估计
一些具有可控姿态精细程度的鲁棒点云配准方法,如ICP及其变体,通常用于提高6D姿态估计精度。然而,随着深度学习技术的进步和初始姿态精度的提高,这些方法的有效性逐渐降低,主要原因是它们缺乏针对姿态细化的具体设计。本文提出了基于融合数据的点云补全和关键点优化(PCKRF),这是一种新的6D姿态估计的姿态优化管道。该管道由两个步骤组成。首先,通过一种新颖的姿态敏感点补全网络完成输入点云;该网络在点补全过程中使用局部和全局特征以及姿态信息。然后,通过提出的颜色支持迭代关键点(CIKP)方法将完成的目标点云注册到相应的目标点云上。CIKP方法在配准中引入颜色信息,并在每个关键点周围配准一个点云以增加稳定性。PCKRF管道可以与现有流行的6D姿态估计方法(如全流双向融合网络)集成,进一步提高其姿态估计精度。实验表明,该方法在初始姿态优化精度较高的情况下,具有较好的稳定性。值得注意的是,结果表明,我们的方法有效地补充了大多数现有的姿态估计技术,在大多数情况下提高了性能。此外,即使在涉及无纹理和对称物体的具有挑战性的场景中,我们的方法也取得了令人满意的结果。
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