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A Multisensor Data Fusion Method Based on Gaussian Process Model for Precision Measurement of Complex Surfaces

机译:基于高斯过程模型的复杂表面精度多传感器数据融合方法

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摘要

As multisensor measurement technology is rapidly applied in industrial production, one key issue is the data fusion procedure by combining several datasets from multiple sensors to obtain the overall geometric measurement. In this paper, a multisensor data fusion method based on a Gaussian process model is proposed for complex surface measurements. A robust surface registration method based on the adaptive distance function is firstly used to unify the coordinate systems of different measurement datasets. By introducing an adjustment model, the residuals between several independent datasets from different sensors are then approximated to construct a Gaussian process model-based data fusion system. The proposed method is verified through both simulation verification and actual experiments, indicating that the proposed method can fuse multisensor measurement datasets with better fusion accuracy and faster computational efficiency compared to the existing method.
机译:随着多传感器测量技术在工业生产中迅速应用,一个关键问题是通过合并来自多个传感器的几个数据集以获得整体几何测量的数据融合过程。本文提出了一种基于高斯过程模型的多传感器数据融合方法,用于复杂的表面测量。首先采用基于自适应距离函数的鲁棒表面配准方法来统一不同测量数据集的坐标系。通过引入调整模型,可以估算来自不同传感器的几个独立数据集之间的残差,以构建基于高斯过程模型的数据融合系统。通过仿真验证和实际实验验证了该方法的有效性,表明与现有方法相比,该方法能够融合多传感器测量数据集,具有更高的融合精度和更快的计算效率。

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