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基于一维卷积神经网络的联动扫描热成像缺陷自动识别与深度回归
引用本文:牟欣颖,何赟泽,王洪金,邓堡元,杨 渊,周 可,杨瑞珍.基于一维卷积神经网络的联动扫描热成像缺陷自动识别与深度回归[J].电子测量与仪器学报,2021,35(4):211-217.
作者姓名:牟欣颖  何赟泽  王洪金  邓堡元  杨 渊  周 可  杨瑞珍
作者单位:湖南大学 电气与信息工程学院 长沙 410082;湖南大学 电气与信息工程学院 长沙 410082;国防科技大学 装备综合保障技术重点实验室 长沙 410073;湖南大学 电气与信息工程学院 长沙 410082;长沙学院 土木工程学院 长沙 410000
基金项目:国防科技大学装备综合保障技术重点实验室基金(6142003200205)、国家自然科学基金 青年科学基金(Z20190142984)、湖南省科技创新计划项目科技人才专项(2018RS3039)、长沙市杰出创新青年培养计划(kq1802023)、长沙市科技计划项目(CSKJ2020 19)资助
摘    要:联动扫描热成像(joint scanning thermography,JST)可以用于检测大面积对象的缺陷,但原始热图像缺陷信息模糊且无法实现缺陷定量.针对联动扫描热成像重构后的图像序列,提出了一种基于一维卷积神经网络(one-dimensional convolutional neural network,1D-C...

关 键 词:红外热成像  机器视觉  深度学习  缺陷

Joint scanning thermography defect automatic classifier and depth regression based on 1D CNN
Mu Xinying,He Yunze,Wang Hongjin,Deng Baoyuan,Yang Yuan,Zhou Ke,Yang Ruizhen.Joint scanning thermography defect automatic classifier and depth regression based on 1D CNN[J].Journal of Electronic Measurement and Instrument,2021,35(4):211-217.
Authors:Mu Xinying  He Yunze  Wang Hongjin  Deng Baoyuan  Yang Yuan  Zhou Ke  Yang Ruizhen
Abstract:Joint scanning thermography(JST) can detect defection of large-area materials. The defection of raw images is inaccurate and the quantitative analysis is hard to achieve. According to the characteristics of images from the reconstruction of joint scanning thermography, a method based on an one-dimensional convolutional neural network ( 1D-CNN) is proposed to detect and quantitate defects. The one-dimensional temperature time series corresponding to the pixels of the pulse image sequences is applied as inputs for the network. This method could achieve defect detection automatically and defect quantification for carbon fiber reinforced polymer. As the result indicated, the 1D-CNN based method could detect defection automatically and accurately. It has a 98. 8% accuracy in defect classifying of training set and an about 70% accuracy in defect classifying of training set. The result is better than traditional method.
Keywords:infrared thermography  machine vision  deep learning  defect
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