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Automatic target detection in GPR images using Histogram of Oriented Gradients (HOG)

机译:使用定向梯度直方图(HOG)自动检测GPR图像中的目标

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Ground Penetrating Radar (GPR) has proven itself to be one of the most popular and reliable geophysical device in subsurface investigation. However, human operators are required to manually interpret the GPR data. In a typical geophysical survey, collected GPR data sometimes can be enormously huge, causing issues such as time consuming and inaccuracy in results due to human errors. In this paper, we present an algorithm that automatically detects hyperbolic signatures in GPR data in B-scan model. This developed algorithm is able to mark potential regions that contain the reflections from target of buried objects. Histogram of Oriented Gradients (HOG) was initially developed to detect pedestrians, but it can be also well-adapted to detect particular shapes and objects. HOG descriptors are extracted from a set of training images and are trained using a linear SVM classifier. The main purpose of this algorithm is to narrow down the data into possible target reflection regions. After that, we implement Hough Transform to highlight the hyperbolic patterns in the reflection. The results shows that the developed system can perform target detection at an average of 93.75% detection rate for all four test sets.
机译:探地雷达(GPR)已被证明是地下调查中最受欢迎和最可靠的地球物理设备之一。但是,要求操作人员手动解释GPR数据。在典型的地球物理勘测中,有时收集的GPR数据可能非常庞大,从而由于诸如人为错误而导致耗时且结果不准确等问题。在本文中,我们提出了一种在B扫描模型中自动检测GPR数据中双曲线签名的算法。此开发的算法能够标记包含来自埋入物体目标的反射的潜在区域。定向梯度直方图(HOG)最初是为了检测行人而开发的,但是也可以很好地检测特定形状和物体。从一组训练图像中提取HOG描述符,并使用线性SVM分类器对其进行训练。该算法的主要目的是将数据缩小到可能的目标反射区域。此后,我们实现霍夫变换以突出显示反射中的双曲线模式。结果表明,所开发的系统可以对所有四个测试集平均以93.75%的检测率执行目标检测。

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