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Real-Time Posture Imitation of Biped Humanoid Robot Based on Particle Filter with Simple Joint Control for Standing Stabilization

机译:基于粒子滤波器的基于粒子过滤器的实时姿势模仿,具有简单的联合控制稳定性

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The purpose of this study is a development of real-time imitation learning system for a humanoid robot. It is needed to estimate joint angles of the robot from the observation of human demonstration, however, it is difficult to measure the joint angles directly. Conventional motion capture systems which measure the joint angles of a human subject precisely are often expensive or hard to use in daily life. Recently, depth sensor has become popular to provide fully-body 3D motion capture because it has advantages of low cost and no markers or trackers. It provides the position of joints of the human subject, however, the joint angles for the imitating robot have to be calculated in some way. Inverse kinematics is often used for the joint angle calculation, however, it needs relatively high computational cost for the optimization calculation and sometimes it has a difficulty to have a unique solution because of redundancy. We propose to use a particle filter for joint angle imitation so it provides a reasonable solution with a less computational cost to realize a real-time imitation of a humanoid robot through observation of human demonstration. However, the particle filter does not provide the standing stability of the humanoid robot. Therefore, we propose a novel and simple method of control of leg joints for the standing stabilization. While the humanoid robot imitates the human posture, the ankle and the hip joint angles of the robot are controlled based on the knee and hip joints provided by the particle filter. We evaluate the proposed method with experiments using a humanoid robot, Aldebaran Robotics NAO, and show its validity.
机译:本研究的目的是为人形机器人的实时模仿学习系统的开发。需要估计机器人的关节角度从人类示范的观察,然而,难以直接测量关节角度。常规运动捕获系统,其测量人类对象的关节角度通常在日常生活中通常昂贵或难以使用。最近,深度传感器变得流行,提供全身3D运动捕获,因为它具有低成本和没有标记或跟踪器的优点。它提供了人类主体的关节的位置,然而,模仿机器人的关节角必须以某种方式计算。逆运动学通常用于关节角度计算,然而,它需要相对高的优化计算计算成本,有时由于冗余而有难以拥有独特的解决方案。我们建议使用粒子过滤器进行关节角度模拟,因此通过观察人类示范,它提供了较少的计算成本的合理解决方案,以实现人形机器人的实时模仿。然而,颗粒过滤器不提供人形机器人的稳定性。因此,我们提出了一种新颖简单的控制腿部关节的方法,用于站立稳定。虽然人形机器人模仿人的姿势,但基于由颗粒过滤器提供的膝盖和髋关节来控制机器人的脚踝和髋关节角度。我们使用人形机器人,Aldebaran机器人Nao评估了所提出的方法,并显示其有效性。

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