Ground penetrating radar roadbed disease target detection method based on convolutional neural network

A convolutional neural network and ground penetrating radar technology, applied in the field of ground penetrating radar subgrade disease target detection based on convolutional neural network, can solve problems such as spending a lot of energy and time, low detection efficiency, and lack of generalization ability.

Active Publication Date: 2021-03-09
XI AN JIAOTONG UNIV
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Problems solved by technology

Although the above method can detect the target, it relies on human analysis and identification, and requires technicians with rich experience and prior knowledge to understand and master a large number of structural characteristics of roadbed disease targets, which contains many subjective factors; it takes a lot of energy and time. The detection efficiency is low; and due to manual operation, the obtained feature parameters and feature representations are less, and the generalization ability is lacking, resulting in low detection accuracy and affecting the judgment of roadbed diseases
[0005] With the development of machine learning in recent years, combined w

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  • Ground penetrating radar roadbed disease target detection method based on convolutional neural network
  • Ground penetrating radar roadbed disease target detection method based on convolutional neural network
  • Ground penetrating radar roadbed disease target detection method based on convolutional neural network

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Embodiment Construction

[0093] The present invention will be described in further detail below in conjunction with the accompanying drawings.

[0094] see figure 1 As shown, the ground penetrating radar roadbed disease target detection method based on the convolutional neural network according to the present invention is operated and processed according to the following steps:

[0095] Step 1: Obtain the original image data of ground penetrating radar

[0096] Use the ground penetrating radar system to detect and collect the actual image data of the ground penetrating radar B-Scan, and use the FDTD-based gprMax software to perform forward modeling simulation on the three common types of diseases in the roadbed to generate the ground penetrating radar B-Scan simulation image ;

[0097] Step 2: GPR data preprocessing

[0098] The collected ground penetrating radar image data is normalized, zero bias removed, and the mean filter method is used to remove the direct wave and automatic gain processing, ...

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Abstract

The invention discloses a ground penetrating radar roadbed disease target detection method based on a convolutional neural network. The method comprises the steps of obtaining original image data of ground penetrating radar simulation and actual collection; performing corresponding preprocessing on the original image data to obtain ground penetrating radar preprocessed images; marking and storingtarget information in the original and preprocessed images; constructing a PASCAL VOC data set by the ground penetrating radar image and the marking information file, and dividing the PASCAL VOC dataset into a training set, a verification set and a test set; dynamically setting an anchor frame parameter initial value in combination with the marked target frame aspect ratio; and then adopting a Cascade R-CNN network built by training set training and verification set fine tuning to obtain a convolutional network model, evaluating the performance of the network model by using the test set, andfinally realizing accurate and rapid detection of the roadbed disease target of the ground penetrating radar. The method does not depend on artificial identification, has strong generalization ability, and can realize rapid and accurate detection of roadbed disease targets.

Description

technical field [0001] The invention relates to the field of ground penetrating radar signal processing, in particular to a ground penetrating radar roadbed disease target detection method based on a convolutional neural network. Background technique [0002] Subgrades are vital to road and railway. Due to construction conditions, geographical environment, climate, vehicle driving and other reasons, there are many diseases on the road. The surface and shallow defects of highways and railways are easy to observe and detect, but the diseases at the subgrade position are not easy to be found. If they are not dealt with in time and effectively, they will affect the use of highways and railways and seriously threaten the safety of drivers. As a non-destructive, high-accuracy, fast-efficiency, and adaptable detection technology, ground-penetrating radar replaces the original lossy and non-destructive detection methods, and is widely used in roadbed disease detection projects. ...

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Application Information

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IPC IPC(8): G01S7/41G01S7/292G01S13/88G01S13/89G06N3/04E01C23/01
CPCG01S7/417G01S7/2923G01S13/885G01S13/89E01C23/01G06N3/045Y02A90/10
Inventor 张安学陈思宇师振盛王百泉林春刚王华谢韬刘永胜尚伟李荆
Owner XI AN JIAOTONG UNIV
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