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基于光流网络模型的岩心CT序列图像裂缝分割
引用本文:谢杨灏,滕奇志.基于光流网络模型的岩心CT序列图像裂缝分割[J].计算机应用与软件,2021,38(1):211-216.
作者姓名:谢杨灏  滕奇志
作者单位:四川大学电子信息学院图像信息研究所 四川 成都 610065;四川大学电子信息学院图像信息研究所 四川 成都 610065
摘    要:由于CT序列图受到成像物体和设备精度影响,传统的CT序列图分割方法需要大量的图像运算,提取的裂缝容易受到噪声的影响。对此,将CT序列图看作一个连续变化的视频序列,使用光流神经网络模型进行帧间变化检测,通过区域聚类和光流阈值实现目标的分割。实验结果表明,该方法很好地解决了岩心CT序列图的裂缝分割,并提高了分割的自动化水平。

关 键 词:数字岩心  CT序列图  光流网络  裂缝分割  深度学习

CRACK SEGMENTATION OF CORE CT IMAGE SEQUENCE BASED ON OPTICAL FLOW NETWORK MODEL
Xie Yanghao,Teng Qizhi.CRACK SEGMENTATION OF CORE CT IMAGE SEQUENCE BASED ON OPTICAL FLOW NETWORK MODEL[J].Computer Applications and Software,2021,38(1):211-216.
Authors:Xie Yanghao  Teng Qizhi
Affiliation:(Institute of Image Information,College of Electronics and Information Engineering,Sichuan University,Chengdu 610065,Sichuan,China)
Abstract:Because CT image sequence is affected by the imaging objects and the accuracy of equipment,traditional segmentation methods of CT image sequence require a lot of image operations,and the extracted cracks are vulnerable to noise.In this paper,CT image sequence is regarded as a continuously changing video sequence,and the optical flow neural network model was used to detect the change of the inter-frame.The new target was updated by optical flow threshold and region clustering.The experimental results show that this method solves the crack segmentation of core CT sequence diagram and improves the automation level of segmentation.
Keywords:Digital core  CT image sequence  Optical flow network  Crack segmentation  Deep learning
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