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Multisensor fusion of FLGPR and thermal and visible-spectrum cameras for standoff detection of buried objects

机译:FLGPR与热像仪和可见光谱相机的多传感器融合,可用于掩埋物体的对峙检测

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Buried targets pose a serious threat to modern soldiers and civilians alike, thus detecting them from a safe standoff distance is an important step in their remediation. Many successful vehicle-based detection systems have been designed to utilize forward-looking ground penetrating radar (FLGPR) for buried target detection at a distance, however, FLGPR has an inherently low signal-to-clutter-ratio (SCR) so its performance is limited. To address this limitation, suites of sensors have been added to some of these vehicle-based systems. In this work we utilize data from these various sensors to improve the buried target classification accuracy. Specifically, we present features extracted from FLGPR, lidar, and thermal- and visible-spectrum camera data, then fuse the various features using a kernel-based classifier. Our results indicate that fusing these multimodal features yields a higher classification performance than utilizing data from the FLGPR alone. We also analyze each sensor's incremental improvement of classification accuracy by performing numerous experiments with different permutations of the sensors.
机译:埋没的目标对现代士兵和平民均构成严重威胁,因此,在安全的对峙距离内对其进行检测是对其进行补救的重要步骤。已经设计出许多成功的基于车辆的检测系统,它们利用前视探地雷达(FLGPR)进行远距离掩埋目标检测,但是,FLGPR具有固有的低信噪比(SCR),因此其性能非常好。有限。为了解决此限制,已将传感器套件添加到某些基于车辆的系统中。在这项工作中,我们利用来自这些各种传感器的数据来提高掩埋目标分类的准确性。具体来说,我们展示从FLGPR,激光雷达以及热光谱和可见光谱相机数据中提取的特征,然后使用基于内核的分类器融合各种特征。我们的结果表明,与仅利用FLGPR的数据相比,融合这些多峰特征可产生更高的分类性能。我们还通过对传感器进行不同排列的大量实验来分析每个传感器对分类精度的逐步提高。

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