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ANFIS-Based Visual Pose Estimation of Uncertain Robotic Arm Using Two Uncalibrated Cameras

机译:基于两个未校准摄像机的不确定机器人手臂基于ANFIS的视觉姿势估计

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This paper describes a new approach for the visual pose estimation of an uncertain robotic manipulator using ANFIS (Artificial Neuro-Fuzzy Inference System) and two uncalibrated cameras. The main emphasis of this work is on the ability to estimate the positioning accuracy and repeatability of a low-cost robotic arm with unknown parameters under uncalibrated vision system. The vision system is composed of two cameras; installed on the top and on the lateral side of the robot, respectively. These two cameras need no calibration; thus, they can be installed in any position and orientation with just the condition that the end-effector of the robot must remain always visible. A red-colored feature point is fixed on the end of the third robotic arm link. In this study, captured image data via two fixed-cameras vision system are used as the sensor feedback for the position tracking of an uncertain robotic arm. LabVolt R5150 manipulator in our laboratory is used as case study. The visual estimation system is trained using ANFIS with subtractive clustering method in MATLAB. In MATLAB, the robot, feature point and cameras are simulated as physical behaviors. To get the required data for ANFIS, the manipulator was maneuvered within its workspace using forward kinematics and the feature point image coordinates were acquired with the two cameras. Simulation experiments show that the location of the robotic arm can be trained in ANFIS using two uncalibrated cameras; and problems for computational complexity and calibration requirement of multi-view geometry can be eliminated. Observing Mean Square Error (MSE), Root Mean Square Error (RMSE), Error Mean and Standard Deviation Errors, the performance of the proposed approach is efficient for using as visual feedback in uncertain robotic manipulator. Further, the proposed approach using ANFIS and uncalibrated vision system has better in flexibility, user-friendly manner and computational concepts over conventional techniques.
机译:本文介绍了一种新的方法,用于使用ANFIS(人工神经模糊推理系统)和两个未经校准的相机对不确定的机械手进行视觉姿态估计。这项工作的主要重点是在未校准的视觉系统下,估计具有未知参数的低成本机械臂的定位精度和可重复性的能力。视觉系统由两个摄像头组成;分别安装在机器人的顶部和侧面。这两个摄像机不需要校准;因此,它们可以安装在任何位置和方向上,而机器人的末端执行器必须始终保持可见。红色的特征点固定在第三个机械臂链接的末端。在这项研究中,通过两个固定摄像头视觉系统捕获的图像数据被用作传感器反馈,用于不确定的机械臂的位置跟踪。我们实验室中的LabVolt R5150机械手用作案例研究。在MATLAB中使用ANFIS和减法聚类方法训练视觉估计系统。在MATLAB中,将机器人,特征点和摄像机模拟为物理行为。为了获得ANFIS所需的数据,使用正向运动学在操纵器的工作空间内操纵操纵器,并使用两个摄像机获取特征点图像坐标。仿真实验表明,可以使用两个未校准的摄像机在ANFIS中训练机械臂的位置;消除了多视图几何的计算复杂度和校准要求的问题。观察均方误差(MSE),均方根误差(RMSE),均方误差和标准偏差,该方法的性能可有效地用作不确定机械手的视觉反馈。此外,与常规技术相比,使用ANFIS和未校准视觉系统的拟议方法在灵活性,用户友好方式和计算概念方面具有更好的优势。

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