基于退化模拟及参数变化特性的动态颗粒图像检测方法

张艳彬

计量学报 ›› 2012, Vol. 33 ›› Issue (3) : 198-202.

PDF(546 KB)
PDF(546 KB)
计量学报 ›› 2012, Vol. 33 ›› Issue (3) : 198-202. DOI: 10.3969/j.issn.1000-1158.2012.03.02

基于退化模拟及参数变化特性的动态颗粒图像检测方法

  • 张艳彬
作者信息 +

The Method of Dynamic Particle Image Detection Based on Degradation Simulation and Parameter Variability

  • ZHANG Yan-bin
Author information +
文章历史 +

摘要

介绍了油液颗粒动态检测系统的发展现状,讨论了动态颗粒图像的检测问题。在分析动态颗粒图像退化原理的基础上,依据系统实验参数对图谱库中的颗粒图像进行了退化模拟,分析和解决了退化图像中颗粒目标提取的问题,研究了图像的各类参数退化前后的变化特性,最终选取了对图像退化具有较好不变性的参数形成了油液动态颗粒图像的检测体系,相比传统系统实现了对颗粒更为详细的检测和分类。

Abstract

The development of oil particle dynamic analysis system is described, and dynamic particle image detection is discussed. On the basis of analyzing degradation theory about dynamic particle image, simulation of degradation of standard debris atlas images is carried out according to the system experimentation parameters, and the particle extraction from degraded image is analyzed and resolved, then the variability of various parameters is studied. At last by means of selecting the parameters with steadiness of degradation, the oil dynamic particle image detection system is developed and comparing with conventional systems more detailed detection and classification are realized.

关键词

计量学 / 动态颗粒检测 / 图像退化模拟 / 退化不变性

Key words

Metrology / Dynamic Particle Detection / Image Degradation Simulation / Steadiness of Degradation

引用本文

导出引用
张艳彬. 基于退化模拟及参数变化特性的动态颗粒图像检测方法[J]. 计量学报. 2012, 33(3): 198-202 https://doi.org/10.3969/j.issn.1000-1158.2012.03.02
ZHANG Yan-bin. The Method of Dynamic Particle Image Detection Based on Degradation Simulation and Parameter Variability[J]. Acta Metrologica Sinica. 2012, 33(3): 198-202 https://doi.org/10.3969/j.issn.1000-1158.2012.03.02
中图分类号: B937   

参考文献

[1]Reintjes J,Tucker J E, et al. Application of LaserNet Fines to Mechanical Wear and Hydraulic Monitoring[C]//DSTO International Conference on Health and Usage Monitoring.Melboure, Australia, 2001:13-21.
[2]史明德,龙怀忠. 发散型微功耗光学流体污染检测传感器: 中国,99115011.2[P].2003.
[3]吕植勇. 磨粒检测数字化方法的研究[D]. 武汉:武汉理工大学, 2006.
[4]Miller N A,Henderson J J.Quantifying sand particle shape complexity using a dynamic digital imaging technique[J]. Agronomy Journal, 2010,102(5) :1407-1414.
[5]武通海,邱辉鹏,吴教义,等. 图像可视在线铁谱传感器的图像数字化处理技术[J].机械工程学报, 2008,44(9):83-87.
[6]辛登科,张玉杰,苏治果. 图像处理在粉末粒度在线检测系统中的应用[J]. 计算机工程与设计,2008,29(13) :3510-3512.
[7]王旭辉,郭光亚.二维匀速运动模糊图像恢复问题的研究[J].计算机应用,2000, 20(10):25-28.
[8]赵琳,金伟其,黄有为,等. 离焦模糊图像超分辨力盲复原算法分析[J].光学技术,2010,36(1):75-78.
[9]安德森 D P.磨粒图谱[M]. 金元生, 杨其明译. 北京:机械工业出版社, 1987.

PDF(546 KB)

Accesses

Citation

Detail

段落导航
相关文章

/