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Accuracy Analysis of Alignment Methods based on Reference Features for Robot-Based Optical Inspection Systems

机译:基于机器人的光学检测系统的参考功能对准方法的精度分析

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In recent years, optical 3D sensors have reached a high level of accuracy suitable for many applications involved in the geometric quality assurance in modern production sites. In order to circumvent the tradeoff between the size of the field of view and the accuracy, a fusion of multiple point clouds is often performed by means of data-driven registration algorithms, such as the well-known ICP. These methods require a coarse alignment of point clouds, which also influences the accuracy and robustness of the actual 3D matching process. In the context of robot-based inspection systems, additional reference features are often applied. The references are well detectable and provide key points. This gives rise to the question of whether or not better initial alignments are obtainable from the measurement data, in contrast to the alignment obtained by the robot kinematic. Therefore, we investigated the accuracy of calculated transformations for translational and rotational modifications based on measured data. The results indicate that for mainly translational relative transformations high accuracies are obtainable. An improvement of the coarse alignment for subsequent fine registration processes promises a contribution towards having more accurate and robust alignments of point clouds, and therefore benefits geometric quality assurance applications in manufacturing industries.
机译:近年来,光学3D传感器达到了高度精度,适用于现代生产基地几何质量保证的许多应用。为了绕过视野的大小与准确性之间的权衡,通常通过数据驱动的登记算法进行多点云的融合,例如众所周知的ICP。这些方法需要点云的粗略对准,这也影响了实际3D匹配过程的准确性和鲁棒性。在基于机器人的检查系统的背景下,通常应用额外的参考功能。参考文献是良好的可检测和提供关键点。与通过机器人运动学获得的对齐相比,这引起了对测量数据可获得更好的初始对准的问题。因此,我们研究了基于测量数据的转换和旋转修改的计算变换的准确性。结果表明,主要是可获得高精度的平移相对转化。随后的精细注册过程的粗校准的改进承诺对点云具有更准确和强大的对准的贡献,因此利益在制造业中的几何质量保证应用。

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