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Support of Data Augmentation with GAN on Faster R-CNN Based Buried Target Detection

机译:基于R-CNN的掩埋目标检测,对GAN的数据增强支持

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摘要

Ground penetrating radar (GPR) is a common technique used for target through-the-obstacle imaging. However, it is quite difficult to detect the presence of a buried object in the obtained images in GPR, and the reason for this is the presence of clutter. Many methods have been proposed for clutter removal. In the classical approach, it is aimed to suppress the clutter and increase the target signal strength and then target detection algorithms used. Nowadays, region based convolutional neural network (RCNN) algorithm is adapted for the buried target detection which does not need any clutter removal algorithms. The accuracy performance of these algorithms is related to the size of the training data set. In this study, a realistic simulation data set was created with the gprMax and this data set is augmented by using the generative adversarial network (GAN) algorithm. The Faster R-CNN structure has been trained with an enhanced simulated data set and tested both in simulated and real data sets. In the results obtained, it has been observed that increasing the data with GAN achieves a performance increase up to %5-54 and it is shown that target detection can be performed on real data with a realistic simulated data set for GPR.
机译:地面穿透雷达(GPR)是用于靶通过障碍物成像的常用技术。然而,在GPR中获得的图像中掩埋物体的存在是非常困难的,并且对此的原因是杂波的存在。已经提出了许多方法进行杂波去除。在经典方法中,旨在抑制杂波并增加目标信号强度,然后使用目标检测算法。如今,基于区域的卷积神经网络(RCNN)算法适用于掩埋目标检测,其不需要任何杂波去除算法。这些算法的精度性能与训练数据集的大小有关。在这项研究中,使用GPRMAX创建了一个现实模拟数据集,并且通过使用生成的对抗网络(GaN)算法来增强该数据集。较快的R-CNN结构已经接受过增强的模拟数据集,并在模拟和实际数据集中进行测试。在获得的结果中,已经观察到,随着GaN的增加,增加的数据增加到%5-54,并且示出了可以对具有用于GPR的现实模拟数据集的真实数据来执行目标检测。

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