论文标题
张力机器人的6n-dof姿势跟踪
6N-DoF Pose Tracking for Tensegrity Robots
论文作者
论文摘要
由压缩元件(杆)和柔性拉伸元件(例如电缆)组成的张力机器人具有多种优势,包括灵活性,低重量和对机械影响的电阻。然而,这些机器人的混合软韧带性质也使定位和跟踪其状态的能力变得复杂。这项工作旨在解决该领域中被认为是巨大的挑战,即,通过一种基于无标记的,基于视觉的方法以及可以衡量机器人电缆长度的新颖的板载传感器来估算紧张的机器人。特别是,提出了一个迭代优化过程,以从RGB-D视频以及电缆传感器的端盖距离测量值以及端盖距离测量值中跟踪每个刚性元件的6多型姿势。为了确保刚性元素的姿势估计值在物理上可行,即,它们不会导致杆之间或环境之间的碰撞,在优化过程中会引入物理约束。使用3杆张力机器人进行现实世界实验,该机器人执行运动步态。给定运动捕获系统的地面真相数据,所提出的方法的成就小于1〜cm的翻译误差和3度旋转误差,这极大地超过了替代方案。同时,该方法可以在整个机器人的运动中提供准确的姿势估计,而运动捕获通常由于阻塞而失败。
Tensegrity robots, which are composed of compressive elements (rods) and flexible tensile elements (e.g., cables), have a variety of advantages, including flexibility, low weight, and resistance to mechanical impact. Nevertheless, the hybrid soft-rigid nature of these robots also complicates the ability to localize and track their state. This work aims to address what has been recognized as a grand challenge in this domain, i.e., the state estimation of tensegrity robots through a markerless, vision-based method, as well as novel, onboard sensors that can measure the length of the robot's cables. In particular, an iterative optimization process is proposed to track the 6-DoF pose of each rigid element of a tensegrity robot from an RGB-D video as well as endcap distance measurements from the cable sensors. To ensure that the pose estimates of rigid elements are physically feasible, i.e., they are not resulting in collisions between rods or with the environment, physical constraints are introduced during the optimization. Real-world experiments are performed with a 3-bar tensegrity robot, which performs locomotion gaits. Given ground truth data from a motion capture system, the proposed method achieves less than 1~cm translation error and 3 degrees rotation error, which significantly outperforms alternatives. At the same time, the approach can provide accurate pose estimation throughout the robot's motion, while motion capture often fails due to occlusions.