Yu Binchao, Liu Wei, Yue Yi
Key Laboratory for Precision and Non-Traditional Machining Technology of the Ministry of Education, Dalian University of Technology, Dalian 116024, China.
Beijing Spacecrafts, China Academy of Space Technology, Beijing 100094, China.
Sensors (Basel). 2023 Oct 20;23(20):8604. doi: 10.3390/s23208604.
Eye-in-hand robotic binocular sensor systems are indispensable equipment in the modern manufacturing industry. However, because of the intrinsic deficiencies of the binocular sensor, such as the circle of confusion and observed error, the accuracy of the calibration matrix between the binocular sensor and the robot end is likely to decline. These deficiencies cause low accuracy of the matrix calibrated by the traditional method. In order to address this, an improved calibration method for the eye-in-hand robotic vision system based on the binocular sensor is proposed. First, to improve the accuracy of data used for solving the calibration matrix, a circle of confusion rectification method is proposed, which rectifies the position of the pixel in images in order to make the detected geometric feature close to the real situation. Subsequently, a transformation error correction method with the strong geometric constraint of a standard multi-target reference calibrator is developed, which introduces the observed error to the calibration matrix updating model. Finally, the effectiveness of the proposed method is validated by a series of experiments. The results show that the distance error is reduced to 0.080 mm from 0.192 mm compared with the traditional calibration method. Moreover, the measurement accuracy of local reference points with updated calibration results from the field is superior to 0.056 mm.
手眼机器人双目传感器系统是现代制造业中不可或缺的设备。然而,由于双目传感器存在诸如弥散圆和观测误差等固有缺陷,双目传感器与机器人末端之间校准矩阵的精度可能会下降。这些缺陷导致传统方法校准的矩阵精度较低。为了解决这个问题,提出了一种基于双目传感器的手眼机器人视觉系统改进校准方法。首先,为了提高用于求解校准矩阵的数据的准确性,提出了一种弥散圆校正方法,该方法对图像中像素的位置进行校正,以使检测到的几何特征接近真实情况。随后,开发了一种具有标准多目标参考校准器强几何约束的变换误差校正方法,该方法将观测误差引入校准矩阵更新模型。最后,通过一系列实验验证了所提方法的有效性。结果表明,与传统校准方法相比,距离误差从0.192毫米降低到了0.080毫米。此外,现场更新校准结果后局部参考点的测量精度优于0.056毫米。