无损探伤2024,Vol.48Issue(3) :12-16,20.

高压涡轮叶片工业CT图像轮廓提取方法研究

Research on Contour Extraction Method of High Pressure Turbine Blade Industrial CT Image

曾凤英 韩晨垚 姚振文
无损探伤2024,Vol.48Issue(3) :12-16,20.

高压涡轮叶片工业CT图像轮廓提取方法研究

Research on Contour Extraction Method of High Pressure Turbine Blade Industrial CT Image

曾凤英 1韩晨垚 1姚振文2
扫码查看

作者信息

  • 1. 中国航发四川涡轮研究院,四川绵阳 621000
  • 2. 西安交通大学,西安 710049
  • 折叠

摘要

针对高压涡轮叶片CT扫描图像轮廓不清晰的问题,提出首先采用基于卷积神经网络模型DexiNed对断层扫描图像进行轮廓的粗提取,然后结合形态学运算方法中的开运算、轮廓细化和轮廓去毛刺方法对提取出的轮廓进行后处理.实验结果表明该方法可以非常准确地提取出高压涡轮叶片断层扫描图像中的结构轮廓,为高压涡轮叶片内部结构尺寸的准确测量提供基础,并具有可推广适用性.

Abstract

In view of the problem that the contour of CT scan images of high-pressure turbine blades is unclear,DexiNed based on convolutional neural network model is proposed to rough extract the contour of the tomography images,and then the extracted contour is post-processed by combining the open operation,contour thinning and contour deburring methods in the morphology operation method.The experimental results show that the proposed method can extract the structure profile from the CT image of high-pres-sure turbine blades very accurately,which provides a basis for the accurate measurement of the internal structure size of high-pressure turbine blades,and can be generalized.

关键词

CT图像/轮廓提取/涡轮叶片/卷积神经网络

Key words

CT image/Contour extraction/Turbine blade/Convolutional neural network

引用本文复制引用

出版年

2024
无损探伤
辽宁仪表研究所有限责任公司

无损探伤

影响因子:0.126
ISSN:1671-4423
参考文献量6
段落导航相关论文