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Decision-Level Fusion of Spatially Scattered Multi-Modal Data for Nondestructive Inspection of Surface Defects

机译:空间分散多模态数据的决策级融合用于表面缺陷的无损检测

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摘要

This article focuses on the fusion of flaw indications from multi-sensor nondestructive materials testing. Because each testing method makes use of a different physical principle, a multi-method approach has the potential of effectively differentiating actual defect indications from the many false alarms, thus enhancing detection reliability. In this study, we propose a new technique for aggregating scattered two- or three-dimensional sensory data. Using a density-based approach, the proposed method explicitly addresses localization uncertainties such as registration errors. This feature marks one of the major of advantages of this approach over pixel-based image fusion techniques. We provide guidelines on how to set all the key parameters and demonstrate the technique’s robustness. Finally, we apply our fusion approach to experimental data and demonstrate its capability to locate small defects by substantially reducing false alarms under conditions where no single-sensor method is adequate.
机译:本文重点讨论来自多传感器非破坏性材料测试的缺陷指示的融合。因为每种测试方法都利用不同的物理原理,所以多方法方法可以有效地将实际缺陷指示与许多错误警报区分开,从而提高检测的可靠性。在这项研究中,我们提出了一种聚合散布的二维或三维感官数据的新技术。使用基于密度的方法,所提出的方法显式解决了定位不确定性,例如配准误差。与基于像素的图像融合技术相比,此功能标志着该方法的主要优势之一。我们提供有关如何设置所有关键参数以及如何证明该技术的鲁棒性的指南。最后,我们将融合方法应用于实验数据,并通过在没有单传感器方法足够的情况下显着减少误报来证明其定位小缺陷的能力。

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