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Feature Vector for Underground Object Detection using B-scan Images from GprMax

机译:使用来自GprMax的B扫描图像进行地下物体检测的特征向量

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One common technology for underground object detection is Ground Penetrating Radar (GPR). For landmine detection, it is vital to have a fast and accurate method. This paper uses synthetic data from GprMax program and proposes a 3-step method to locate and discriminate underground objects: 1) Pre-processing using n-rows average 2) Image scaling and 3) converting Region of Interest (ROI) to a feature vector. Proposed method has been tested using 5 methods; 2 classification algorithms; and 3 different image scales. The detection accuracy and runtime performances have been reported according to classifiers. Proposed method has a good potential with its runtime performance and small representation capacity. Although, it has slightly lower performance for K-Nearest Neighbors (KNN) compared to Histograms of Oriented Gradients (HOG), proposed method increases overall performance comparably for Support Vector Machines (SVM) from 67.6% to 85.5%.
机译:探地物体的一种常用技术是探地雷达(GPR)。对于地雷检测,拥有一种快速而准确的方法至关重要。本文使用来自GprMax程序的合成数据,并提出了一种三步法来定位和区分地下物体:1)使用n行平均进行预处理2)图像缩放和3)将感兴趣区域(ROI)转换为特征向量。建议的方法已使用5种方法进行了测试; 2个分类算法;和3种不同的图像比例。已经根据分类器报告了检测准确性和运行时性能。所提出的方法具有运行时性能和较小的表示能力,具有很大的潜力。尽管与定向梯度直方图(HOG)相比,K最近邻(KNN)的性能略低,但建议的方法将支持向量机(SVM)的整体性能从67.6%提升到85.5%。

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