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Clustering Based Multi Sensor Data Fusion for Honeycomb Detection in Concrete

机译:基于聚类的混凝土蜂窝检测多传感器数据融合

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摘要

We use three clustering algorithms to aggregate a three-modal non-destructive testing data set into defect and not-defect groups. Our data set consist of impact-echo, ultrasound (US) and ground penetrating radar data collected on a large concrete slab with embedded simulated honeycombing defects. USperforms best in defect discriminating and sizing, however the false positive rate is still high. We fuse the data set using K-Means, Fuzzy C-Means and DBSCAN clustering at feature-level. We discern that DBSCAN improves the detectability up to 10%. A discussion of its advantages over commonly used K-Means and Fuzzy C-Means clustering are provided.
机译:我们使用三种聚类算法将三模式无损检测数据集聚合为缺陷组和非缺陷组。我们的数据集包括在大型混凝土板上收集的,具有嵌入式模拟蜂窝缺陷的冲击回波,超声(美国)和探地雷达数据。美国在缺陷识别和尺寸确定方面表现最佳,但是假阳性率仍然很高。我们在特征级别使用K均值,模糊C均值和DBSCAN聚类融合数据集。我们发现DBSCAN将可检测性提高了10%。提供了相对于常用K均值和模糊C均值聚类的优势的讨论。

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