基于转矩的递归滤波方法从图像序列中恢复三维关节运动

Hiroyuki Segawa, T. Totsuka
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引用次数: 9

摘要

本文介绍了一种从图像序列中恢复三维关节运动的递归滤波方法。在递归滤波框架中,结果的质量很大程度上取决于状态变量的选择和过程模型的确定;它模拟一个要估计其运动的真实物体。我们的方法将机器人动力学应用到递归滤波框架中。关键策略是将关节力矩纳入模型状态变量。此外,我们假设关节力矩的变化是高斯噪声。本文描述了如何将动力学方程集成到卡尔曼滤波器中,实验结果表明该方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Torque-based recursive filtering approach to the recovery of 3D articulated motion from image sequences
In this paper we introduce a recursive filtering method to recover the 3D articulated motion from image sequences. In recursive filtering frameworks, the quality of the results heavily depends on the choice of state variables and the determination of the process model; which models a real object whose motion is to be estimated. Our approach employs robotics dynamics into the recursive filtering framework. And the key strategy is to incorporate joint torques into the model state variables. In addition, we assumed the variations of the joint torques are Gaussian noises. We describe how to integrate dynamics equations into Kalman filters, and with the experimental results our method is shown to be effective.
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