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Uncalibrated robotic visual servo tracking for large residual problems.

机译:未经校准的机器人视觉伺服跟踪功能可解决大量残留问题。

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摘要

In visually guided control of a robot, a large residual problem occurs when the robot configuration theta is not in the neighborhood of the target acquisition configuration theta*. Most existing uncalibrated visual servoing algorithms use quasi-Gauss-Newton methods which are effective for small residual problems. The solution used in this study switches between a full quasi-Newton method for large residual case and the quasi-Gauss-Newton methods for the small case. Visual servoing to handle large residual problems for tracking a moving target has not previously appeared in the literature.;For large residual problems various Hessian approximations are introduced including an approximation of the entire Hessian matrix, the dynamic BFGS (DBFGS) algorithm, and two distinct approximations of the residual term, the modified BFGS (MBFGS) algorithm and the dynamic full Newton method with BFGS ( DFN-BFGS) algorithm. Due to the fact that the quasi-Gauss-Newton method has the advantage of fast convergence, the quasi-Gauss-Newton step is used as the iteration is sufficiently near the desired solution. A switching algorithm combines a full quasi-Newton method and a quasi-Gauss-Newton method. Switching occurs if the image error norm is less than the switching criterion, which is heuristically selected.;An adaptive forgetting factor called the dynamic adaptive forgetting factor (DAFF) is presented. The DAFF method is a heuristic scheme to determine the forgetting factor value based on the image error norm. Compared to other existing adaptive forgetting factor schemes, the DAFF method yields the best performance for both convergence time and the RMS error.;Simulation results verify validity of the proposed switching algorithms with the DAFF method for large residual problems. The switching MBFGS algorithm with the DAFF method significantly improves tracking performance in the presence of noise. This work is the first successfully developed model independent, vision-guided control for large residual with capability to stably track a moving target with a robot.
机译:在机器人的视觉引导控制中,当机器人配置θ不在目标获取配置θ*附近时,会产生较大的残留问题。大多数现有的未经校准的视觉伺服算法都使用准高斯牛顿法,这种方法对于小的残留问题非常有效。本研究中使用的解决方案在大残留情况下的完全拟牛顿法与小情况下的拟高斯牛顿法之间切换。视觉伺服处理用于跟踪运动目标的大残差问题以前在文献中还没有出现。对于大残差问题,引入了各种黑森近似,包括整个黑森矩阵的近似,动态BFGS(DBFGS)算法以及两种截然不同的方法。残差项的近似值,改进的BFGS(MBFGS)算法和带BFGS的动态全牛顿法(DFN-BFGS)算法。由于准高斯牛顿法具有收敛速度快的优点,由于迭代足够接近所需解,因此使用了准高斯牛顿步。切换算法结合了完全拟牛顿法和拟高斯牛顿法。如果图像误差范数小于切换标准,则进行切换。该切换标准是启发式选择的。提出了一种自适应遗忘因子,称为动态自适应遗忘因子(DAFF)。 DAFF方法是一种启发式方案,用于根据图像误差范数确定遗忘因子值。与其他现有的自适应遗忘因子方案相比,DAFF方法在收敛时间和RMS误差方面均表现出最佳的性能。仿真结果验证了DAFF方法对大残留问题的有效性。具有DAFF方法的MBFGS切换算法可在存在噪声的情况下显着提高跟踪性能。这项工作是第一个成功开发的独立于模型的视觉引导控制系统,该控制系统可处理大量残差,并具有通过机器人稳定跟踪运动目标的能力。

著录项

  • 作者

    Munnae, Jomkwun.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Engineering Mechanical.;Engineering Robotics.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 327 p.
  • 总页数 327
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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