期刊文献+

应用级联分类器检测安瓿内弱小运动目标 被引量:3

Inspection of small moving foreign substances in ampoule based on cascade classifiers
下载PDF
导出
摘要 针对序列图像内具有低信噪比和低对比度特征的运动目标,提出了一种基于级联分类器的弱小目标检测算法。该算法从安瓿瓶序列图像内提取绝对差分值、局部差分对比度和局部相关系数3个图像特征。每个图像特征对应一个分类器,通过三层级联形式实现序列图像中的小目标检测。第一个节点与传统帧间差分法类似,主要去除大量背景图像并检测出大颗粒运动目标,后两个节点则用于检测弱小目标、排除光流和瓶身污渍产生的噪声点。实验结果显示,相对于传统的帧间差分法,本文算法具有高检测精度和高抗干扰能力等特点,不仅可以检测出图像中弱小运动目标,同时也消除了复杂背景下的噪声影响,弱小目标的检出率达到99.3%,并且满足安瓿在线检测的实时性要求。 An inspection algorithm based on cascade classifiers is presented for detecting small moving foreign substances with low Signal and Noise Ratio (SNR) and low contrast in sequential images. The algorithm obtains three features of absolute difference, local difference contrast and neighborhood correlation from the sequential images of an ampoule. Each feature corresponds to a classifier, and small foreign substances are inspected by using three-layer cascade classifiers. The first layer corresponds to a traditional frame differencing method, which is used to remove the background and detect the large moving foreign substances. The next two layers are used to inspect small foreign substances and remove the noises generated by optical flow and the stain of bottle. Experiment results show that compared with the traditional frame differencing method, this algorithm has higher detection precision and higher anti-interference ability in inspecting small substances with the interference of a complex background, and the detection rate of small foreign substance is 99.3%. This algorithm can meet the requirement of real-time detection of ampoules for medicine production.
出处 《光学精密工程》 EI CAS CSCD 北大核心 2012年第1期190-196,共7页 Optics and Precision Engineering
基金 国家863高技术研究发展计划资助项目(No.2008AA042207)
关键词 级联分类器 帧间差分法 小目标检测 序列图像 cascade classifier frame difference small target inspection sequential image
  • 相关文献

参考文献10

二级参考文献62

共引文献112

同被引文献28

  • 1王馥宇,黄梅珍,曾涛,管相宇,孙小小,汪洋.针剂中异物的光电检测方法研究[J].光子学报,2012,41(3):375-378. 被引量:6
  • 2H. J. Liu. A novel vision based inspector with light [ J ]. Ap- plied Mechanics and Materials, 2013, 268:1916 -1921.
  • 3J. Ge, Y. N. Wang, B. W. Zhou. Intelligent foreign particle inspection machine for injection liquid examination based on mod- ified pulse- coupled neural networks [ J ]. Sensors, 2009, 9: 3386 - 3404.
  • 4Frischholz R W,Spinnler K P.Class of algorithms for realtime subpixel registration[C]//Proceedings of the SPIE:The International Society for Optical Engineering.Munich:SPIE,1993:50-59.
  • 5Ghosal S,Mehrotra R.Orthogonal moment operators for subpixel edge detection[J].Pattern Recognition,1993,26(2):295-306.
  • 6Teague M R.Image analysis via the general theory of moments[J].Journal of the Optical Society of America,1980,70:920-930.
  • 7Zenkouar H,Nachit A.Images compression using moments method of orthogonal polynomials[J].Materials Science and Engineering,1997,49(3):211-215.
  • 8Hu M-K.Visual pattern recognition by moment invariants[J].Ire Transactions on Information Theory,1962,8(2):179-187.
  • 9黎俊,彭启民,范植华.亚像素级图像配准算法研究[J].中国图象图形学报,2008,13(11):2070-2075. 被引量:40
  • 10黄荣兵,杜明辉,梁帼英,谢德鑫.一种改进的伪Zernike矩快速计算方法[J].华南理工大学学报(自然科学版),2009,37(1):54-58. 被引量:5

引证文献3

二级引证文献5

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部