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探地雷达图像数据不均衡的改进方法研究

Research on the improvement method of imbalance of ground penetrating radar image data.

作者信息

Cao Ligang, Liu Lei, Lu Congde, Chen Ruimin

机构信息

Key Laboratory of Earth Exploration and Information Techniques of Ministry of Education, Chengdu University of Technology, Chengdu, 610059, Sichuan, China.

出版信息

Sci Rep. 2025 Jan 22;15(1):2859. doi: 10.1038/s41598-025-87123-3.

Abstract

Ground Penetrating Radar (GPR) has been widely used to detect highway pavement structures. In recent years, deep learning techniques have achieved significant success in image recognition, which is potentially relevant for interpreting ground-penetrating radar data. This is because the various types of damage develop at different levels and in different quantities. So the number of datasets of various types of road injuries is not balanced. This leads to poor accuracy of deep learning for injury classification. And the cost of collecting a large amount of data in the field is higher. The aim of this paper is to improve classification accuracy at a lower cost relative to field collection, we propose a damage data expansion method based on generative adversarial network, which consists of encoder and a generative adversarial network. We have made a number of improvements to the generator and discriminator, as well as to the newly added encoder. All of these improvements have improved the generation results in terms of metrics. So that the network can stably generate damage samples with a small number of samples to improve the classification network's accuracy. The effect on accuracy by varying the proportions of different kinds of samples and traditional expansion methods is also explored. The improvement of the classification network accuracy and FlD metrics illustrates the better performance of the proposed method.

摘要

探地雷达(GPR)已被广泛用于检测公路路面结构。近年来,深度学习技术在图像识别方面取得了显著成功,这可能与解释探地雷达数据相关。这是因为各种类型的损伤在不同层面以不同数量发展。因此,各类道路损伤的数据集数量不均衡。这导致深度学习损伤分类的准确性较差。而且在现场收集大量数据的成本较高。本文的目的是相对于现场收集以更低成本提高分类准确性,我们提出了一种基于生成对抗网络的损伤数据扩充方法,该方法由编码器和生成对抗网络组成。我们对生成器、判别器以及新添加的编码器都做了一些改进。所有这些改进在指标方面都提升了生成结果。从而使网络能够用少量样本稳定地生成损伤样本,以提高分类网络的准确性。还探讨了改变不同种类样本的比例和传统扩充方法对准确性的影响。分类网络准确性和FID指标的提升说明了所提方法具有更好的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/13c6/11754838/92073a20f4c3/41598_2025_87123_Fig6_HTML.jpg

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