基本信息来源于合作网站,原文需代理用户跳转至来源网站获取       
摘要:
This paper presents a vision-based crack detection approach for concrete bridge decks using an integrated one-dimensional convolutional neural network(1D-CNN)and long short-term memory(LSTM)method in the image frequency domain.The so-called 1D-CNN-LSTM algorithm is trained using thousands of images of cracked and non-cracked concrete bridge decks.In order to improve the training efficiency,images are first transformed into the frequency domain during a preprocessing phase.The algorithm is then calibrated using the flattened frequency data.LSTM is used to improve the performance of the devel-oped network for long sequence data.The accuracy of the developed model is 99.05%,98.9%,and 99.25%,respectively,for training,validation,and testing data.An implementation framework is further developed for future application of the trained model for large-scale images.The proposed 1D-CNN-LSTM method exhibits superior performance in comparison with existing deep learning methods in terms of accuracy and computation time.The fast implementation of the 1 D-CNN-LSTM algorithm makes it a promising tool for real-time crack detection.
推荐文章
免疫捕捉real-time PCR对蚜虫中CMV检测体系的建立与应用
免疫捕捉real-time PCR
黄瓜花叶病毒(CMV)
蚜虫
Real-time PCR方法检测肉品中的沙门氏菌
沙门氏菌
Real-time PCR
快速检测
肉品
Real-time PCR、焦磷酸测序及基因芯片快速检测ALDH2?2基因多态性
ALDH2
多态性
焦磷酸测序
Real-time PCR
基因芯片
内容分析
关键词云
关键词热度
相关文献总数  
(/次)
(/年)
文献信息
篇名 Real-Time Detection of Cracks on Concrete Bridge Decks Using Deep Learning in the Frequency Domain
来源期刊 工程(英文) 学科
关键词
年,卷(期) 2021,(12) 所属期刊栏目 Civil Engineering—Article
研究方向 页码范围 1786-1796
页数 11页 分类号
字数 语种 英文
DOI
五维指标
传播情况
(/次)
(/年)
引文网络
引文网络
二级参考文献  (0)
共引文献  (0)
参考文献  (0)
节点文献
引证文献  (0)
同被引文献  (0)
二级引证文献  (0)
2021(0)
  • 参考文献(0)
  • 二级参考文献(0)
  • 引证文献(0)
  • 二级引证文献(0)
引文网络交叉学科
相关学者/机构
期刊影响力
工程(英文)
双月刊
2095-8099
10-1244/N
16开
北京市朝阳区惠新东街4号
80-744
2015
eng
出版文献量(篇)
817
总下载数(次)
8
论文1v1指导