Ground Penetrating Radar (GPR) has been widely used to estimate the healthy operation of some urban roads and underground facilities. When identifying subsurface anomalies by GPR in an area, the obtained data could be unbalanced, and the numbers and types of possible underground anomalies could not be acknowledged in advance. In this paper, a novel method is proposed to improve the subsurface anomaly detection from GPR B-scan images. A normal (i.e. without subsurface objects) GPR image section is firstly collected in the detected area. Concerning that the GPR image is essentially the representation of electromagnetic (EM) wave and propagation time, and to preserve both the subsurface background and objects' details, the normal GPR image is segmented and then fused with simulated GPR images that contain different kinds of objects to generate the synthetic data for the detection area based on the wavelet decompositions. Pre-trained CNNs could then be fine-tuned with the synthetic data, and utilized to extract features of segmented GPR images subsequently obtained in the detection area. The extracted features could be classified by the one-class learning algorithm in the feature space without pre-set anomaly types or numbers. The conducted experiments demonstrate that fine-tuning the pre-trained CNN with the proposed synthetic data could effectively improve the feature extraction of the network for the objects in the detection area. Besides, the proposed method requires only a section of normal data that could be easily obtained in the detection area, and could also meet the timeliness requirements in practical applications.
翻译:地面穿透雷达(GPR)被广泛用于估计一些城市道路和地下设施的正常运行情况。当通过GPR查明某一地区的地表下异常现象时,所获得的数据可能是不平衡的,可能地下异常现象的数量和类型可能无法事先确认。在本文件中,提议采用新的方法改进GPR B 扫描图像中的地表下异常现象探测。首先在检测地区收集了正常(即没有地下物体)的GPR图像部分。关于GPR图像基本上代表电磁波和传播时间,并保存地表下背景和物体的细节,正常的GPR图像被分割,然后与模拟GPR图像结合,这些图像含有不同种类的物体,以根据波列B 扫描图像来生成探测区的合成数据。经过预先训练的CNN可以与合成数据进行微调,然后用于提取随后在检测地区获得的分解GPR图像的特征。提取的特征可以由地表空间的一级学习算法进行分类,从而在正常检测区域中能够有效地改进拟议的合成网络数据类型或数字。在拟议的合成检测区域中,还可以对拟议的合成检测方法进行改进。