期刊文献+

基于免疫模板聚类的模糊中波红外图像目标提取 被引量:5

Extracting Target from Blurred Midwave Infrared Image Based on Immune Template Clustering
下载PDF
导出
摘要 借鉴生物先天性免疫与适应性免疫的协调作用机制,综合考虑中波红外图像的光谱成像机理和频域模板统计特征,提出一种免疫模板聚类目标提取算法。借鉴先天性免疫对抗原表面分子模式的识别作用,以最大类间方差,将模糊中波红外图像初分割为目标像素集、背景像素集和模糊像素集;借鉴先天性免疫的特征提呈作用,提取中波红外图像模糊像素的频域模板特征,将图像的像素灰度特征空间映射为频域模板特征空间;基于提呈得到的模板特征,对模糊像素集进行适应性免疫聚类,将模糊像素划分为目标像素或背景像素。用手部痕迹的模糊中波红外图像进行实验,并与经典边缘检测模板法和传统区域模板法进行了效果比较和定量评价,结果表明免疫模板聚类算法的目标提取率、与参考标准的重合度、绝对误差率均优于现有模板方法,能够有效实现模糊中波红外图像的目标提取。 Extracting targets from a blurred midwave infrared image is a challenging task due to the fuzziness of the image .In-spired by the coordination mechanism between biological innate immunity and adaptive immunity ,an immune template clustering targets extraction method is proposed ,which based on imaging mechanism and template statistical property of midwave image . Firstly ,by learning from the recognition function of innate immunity and maximizing the between-cluster variance ,a midwave blurred infrared image is segmented into a target pixel set ,a background pixel set and a blurred pixel set .Secondly ,according to the presentation function of innate immunity ,the frequency domain template features of pixels in midwave blurred infrared image are extracted .Finally ,adaptive immune clustering is completed for the blurred pixel set based on frequency domain template fea-ture ,in order to divide each blurred pixel into target pixel or background pixel .Experimental results show that the proposed al-gorithm can extract targets from a midwave blurred infrared image efficiently .Compared with classical edge template and conven-tional region template methods ,the immune template clustering method has better extraction efficiency ,absolute error rate and coincidence degree with ground truth .
出处 《光谱学与光谱分析》 SCIE EI CAS CSCD 北大核心 2014年第3期673-676,共4页 Spectroscopy and Spectral Analysis
基金 国家自然科学基金项目(61272358)资助
关键词 模糊红外图像 目标提取 免疫模板聚类 模板特征 Blurred infrared image Target extraction Immune template clustering Template feature
  • 相关文献

参考文献12

  • 1Xiong Zonglong, Yang Kuntao, Ding Wenxiu, et al. Applied Optics, 2010, 49(18): 3587.
  • 2Gonzalez R C, Woods R E. Digital Image Processing. Prentice Hall, New Jersey, 2008.
  • 3Wang Hongzhi, Oliensis J. Computer Vision and Image Understanding, 2010, 114(7) : 731.
  • 4Yu Peter, Qin K, Clausi A. IEEE Transactions on Geoscienee and Remote Sensing, 2012, 50(4): 1302.
  • 5Corcoran Padraig, Winstanley Adam, Mooney Peter. Machine Vision and Applications, 2011, 22(6): 1027.
  • 6Bhanu B, Fonder S. Pattern Recognition, 2004, 37(1): 61.
  • 7Bo Hua, Ma Fulong, Han Baojun, et al. SAR Image Segmentation Based on Immune Algorithm. International Conference on Control and Automation, Budapest, Hungary, 2005. 26.
  • 8Twycross J, Aickelin U. International Journal of Unconventional Computing, 2010, 6(3): 301.
  • 9Nobutaka Suzuki, Shinobu Suzuki. Science, 2006, 311(5769): 1927.
  • 10Akiko Iwasakil, Ruslan Medzhitov. Science, 2010, 327(5963): 291.

同被引文献63

  • 1尚振宏,刘明业.基于欧氏距离的拐点检测算法[J].计算机应用,2004,24(10):88-91. 被引量:8
  • 2MASTORAKIS G,MAKRIS D.Fall detection system using Kinect's infrared sensor[J].Journal of Real-Time Image Processing,2014,9(4):635-646.
  • 3LIU Y Y.Research on library lighting intelligent control based on infrared image processing techniques[J].Optik-International Journal for Light and Electron Optics,2015,126(18):1559-1561.
  • 4CIESIELSKI K C,HERMAN G T,KONG T Y.General theory of fuzzy connectedness segmentations[J].Neurocomputing,2015,24(6):170-186.
  • 5BO H,MA F L,HAN B J,et al.SAR image segmentation based on immune algorithm[C].Proceedings of the Fifth International Conference on Control and Automation,Shanghai,P.R.China:ICCA,2005:1279-1282.
  • 6XIA D X,LI C G,YANG S H.Fast threshold selection algorithm of infrared human images based on two-dimensional fuzzy tsallis entropy[J].Mathematical Problems in Engineering,2014,2014(3):57-69.
  • 7BOYKOV Y,KOLMOGOROV V.An experimental comparison of min-cut/max-flow algorithms for energy minimization in vision[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2004,26(9):1124-1137.
  • 8WANG T,JI Z X,SUN Q S,et al.Image segmentation based on weighting boundary information via graph cut[J].Journal of Visual Communication and Image Representation,2015,33(1):10-19.
  • 9ROTHER C,KOLMOGOROV V,BLAKE A.Grabcut:interactive foreground extraction using iterated graph cuts[J].ACM Transactions on Graphics(TOG),2004,23(3):309-314.
  • 10CHITTAJALLU D R,BRUNNER G,KURKURE U,et al.Fuzzy-cuts:A knowledge-driven graph-based method for medical image segmentation[C].2009IEEE Conference on Computer Vision and Pattern Recognition(CVPR),Alaska,US:IEEE,2009:715-722.

引证文献5

二级引证文献18

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