WANG Hui, OUYANG Shan, LIAO Ke-fei, et al. GPR B-SCAN Image Hyperbola Detection Method Based on Deep Learning[J]. Acta Electronica Sinica, 2021, 49(5): 953-963.
DOI:
WANG Hui, OUYANG Shan, LIAO Ke-fei, et al. GPR B-SCAN Image Hyperbola Detection Method Based on Deep Learning[J]. Acta Electronica Sinica, 2021, 49(5): 953-963. DOI: 10.12263/DZXB.20200635.
GPR B-SCAN Image Hyperbola Detection Method Based on Deep Learning
In order to improve the accuracy of GPR (ground penetrating radar) B-SCAN hyperbola detection
the deep learning method is applied to the processing of GPR data. In order to solve the problem of insufficient samples in the data set
the GPR B-SCAN image data is augmented by using cycle generative adversarial networks algorithm (CycleGAN). The Faster R-CNN operator is used to locate the hyperbolic image area
making full use of the symmetry of the hyperbolic structure and its directional difference characteristics
designing the corresponding convolution kernel template
and realize effective segmentation of hyperbolic targets in B-SCAN images through convolution op
eration. The least square method is used to perform quadratic curve fitting on the hyperbolic target to obtain an accurate hyperbolic image. Compared with B-SCAN image detection algorithms such as transfer learning-based methods
HOG (histogram of oriented gradients) algorithm and Hough transform algorithm
the results obtained by the method in this paper are optimal on the comprehensive measurement index