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Efficient TCP Calibration Method for Vision Guided Robots Based on Inherent Constraints of Target Object

机译:基于目标对象固有约束的视觉引导机器人有效的TCP校准方法

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摘要

Tool Center Point (TCP) calibration and target object calibration are essential to guarantee the accuracy of Vision Guided Robot (VGR) systems. After calibration, the robot can know the object’s position and orientation from the vision system and then move the TCP to a target point. However, conventional calibration methods are time-consuming and often resort to external tools. We propose a universal method based on the inherent constraints of the target points and use it to simultaneously calibrate the TCP and the target object. In order to obtain the TCP parameters, first, we build a constraint model to TCP by exploiting the target object calibration. By this means, TCP calibration can be combined into the target object calibration, and hereby no external calibration tools are required. Second, we represent this model as an optimization problem of minimizing the reprojection error in the domain of Lie algebra. Third, we solve the numerical problem by the Gauss-Newton algorithm with the perturbation model. Notably, we point out that the universal model can be reduced to a particular simple case when a specific point on the object is available, e.g., a corner of the target object can be recognized by the camera. Here, we present a particular coordinate conversion method to exempt the case from calculating the TCP parameters, which is applicable in a wide range of applications. The practicability and the accuracy of the proposed methods are verified by comparative experiments and numerical simulations. Results show that our method improves TCP calibration efficiency and accuracy by integrating the TCP calibration and object calibration.
机译:刀具中心点(TCP)校准和目标对象校准对于保证视觉引导机器人(VGR)系统的准确性是必不可少的。校准后,机器人可以知道对象的位置和来自视觉系统的方向,然后将TCP移动到目标点。然而,传统的校准方法是耗时的,并且通常诉诸外部工具。我们提出了一种基于目标点的固有约束的普遍方法,并使用它来同时校准TCP和目标对象。为了获得TCP参数,首先,通过利用目标对象校准,我们将约束模型构建到TCP。通过这种方式,TCP校准可以组合到目标对象校准中,因此不需要外部校准工具。其次,我们将该模型表示为最小化Lie代数域中的重注错误的优化问题。第三,我们通过扰动模型解决了高斯牛顿算法的数值问题。值得注意的是,当物体上的特定点可用时,我们指出了通用模型可以减少到特定的简单情况,例如,可以通过相机识别目标对象的角落。在这里,我们提出了一种特定的坐标转换方法来豁免案例计算TCP参数,这适用于各种应用。通过比较实验和数值模拟验证所提出的方法的实用性和准确性。结果表明,我们的方法通过集成TCP校准和对象校准来提高TCP校准效率和准确性。

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