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Buried Object Detection from B-Scan Ground Penetrating Radar Data Using Faster-RCNN

机译:使用Faster-RCNN从B扫描探地雷达数据中进行掩埋物体检测

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In this paper, we adapt the Faster-RCNN framework for the detection of underground buried objects (i.e. hyperbola reflections) in B-scan ground penetrating radar (GPR) images. Due to the lack of real data for training, we propose to incorporate more simulated radargrams generated from different configurations using the gprMax toolbox. Our designed CNN is first pre-trained on the grayscale Cifar-10 database. Then, the Faster-RCNN framework based on the pre-trained CNN is trained and fine-tuned on both real and simulated GPR data. Preliminary detection results show that the proposed technique can provide significant improvements compared to classical computer vision methods and hence becomes quite promising to deal with this kind of specific GPR data even with few training samples.
机译:在本文中,我们将Faster-RCNN框架适用于在B扫描探地雷达(GPR)图像中检测地下掩埋物体(即双曲线反射)。由于缺乏用于训练的真实数据,我们建议使用gprMax工具箱合并更多由不同配置生成的模拟雷达图。我们设计的CNN首先在灰度Cifar-10数据库上进行了预训练。然后,基于预训练的CNN的Faster-RCNN框架将在真实GPR数据和模拟GPR数据上进行训练和微调。初步的检测结果表明,与传统的计算机视觉方法相比,该技术可以提供显着的改进,因此,即使训练样本很少,该方法也有望用于处理此类特定的GPR数据。

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