期刊文献+

结合SVM和分形维数的多特征红外人造目标提取 被引量:2

Extraction of infrared man-made target based on multi-features by combining SVM with fractal dimension
在线阅读 下载PDF
导出
摘要 研究了红外图像中人造目标的提取.首先,通过计算红外图像目标的分形维数确定红外目标和背景的大致区域;然后,分别提取目标图像和背景图像的灰度级特征(邻域中心像素亮度、邻域中值亮度和邻域平均亮度),再利用支持向量机(SVM)进行训练,并尝试用不同的核函数及其参数建立最适当的区分目标和背景像素点的模型,进而把红外图像像素点分成目标和背景2类;最后,利用构建的模型实现红外图像中人造目标的提取.实验结果表明,用该方法建立的分类模型可以有效地提取红外图像中的人造目标. It was studied the extraction of man-made target in infrared image,it was first determined by computing the image fractal dimension of the approximate area of the infrared target,and the background were extracted from the grayscale characteristics of the target image and the background image(the pixel brightness of the center of the neighborhood,neighborhood values brightness and neighborhood average luminance).The support vector machine(SVM) for training,a different kernel functions and function parameters were used to establish the most appropriate model to distinguish between target and background pixels,and then divided into two of the target and background pixelsclass.The built model was the most final extraction of man-made target in infrared image.Experiment results showed that the classification model established by this method could effectively extract the man-made target in infrared image.
出处 《浙江师范大学学报(自然科学版)》 CAS 2013年第2期133-139,共7页 Journal of Zhejiang Normal University:Natural Sciences
基金 浙江省科技厅公益性应用研究计划项目(2012C23027 2012C31005) 计算机软件与理论浙江省重中之重学科开放基金资助项目(ZC323011014)
关键词 SVM 分形维数 红外图像 人造目标 SVM fractal dimension infrared image man-made target
  • 相关文献

参考文献11

  • 1郭海涛,周军.舰船红外图像处理技术及应用[J].海洋技术,2009,28(3):91-92. 被引量:6
  • 2Hinz S, Baumgartner A. Automatic extraction of urban road networks from multi-view aerial imagery [ J ]. ISPRS Jon of Photogram & Remote Sensing,2003,58(3 ) :83-98.
  • 3Cheng Hui, Bnuma C A. Multiscale bayesian segmentation using a trainable context model [ J ]. 1EEE Trmas on Image Processing,20Ol, 10(4) : 511-525.
  • 4Andrey R,Tarox P. Segmentation of mark model texture image in selection relaxation[ J ]. IEEE Trans un Patten Analysis anti Machine Intelli- gence, 1998,20 ( 3 ):252 -262.
  • 5Cao Guo, Yang Xin, Mao Zhihong. A two-stage level set evolution scheme for man-nmde objects detection in serial images [ C ]//1EEE Computer Society Conference on Compnter Vision and Pattern Recognition. California: IEEE,2005:474.-476.
  • 6Kanongo T, Mount D M, Ncthan S,et al. A local search approximation algorithm for K-means clustering[ J ]. Computatiunal Geometry ,2004,28 (2/3) :89-112.
  • 7Denpster A l),l.aird N M,Rsin D B. Maximum likelihood from incomplete data via the EM algorithm[J].Journal of tile Royal Statistieal Socie- ty, 1977,39( 1 ) : 1 48.
  • 8Mandelbrot B B. The fractal geometry, of nature[ M ]. New Yurk : W H Freeman and Company, 1982 : 102-113.
  • 9金梅,张长江.一种有效的红外图像中人造目标分割方法[J].光电工程,2005,32(4):82-85. 被引量:2
  • 10Chaudhuri B B,Sarkar N. Texture segmentation using fractal dimension[ J ]. IEEE Trans on Pattern Analysis and Machine lntclhgence, 1995 17( 1 ) :72-77.

二级参考文献17

  • 1郭海涛.舰船红外图像处理研究的军事意义和现状.仪器仪表学报,2008,29(4):626-628.
  • 2T Zouagui, H Benoit-Cattin, C Odet. Image segmentation functional model[J]. Pattern Recognition, 2004, 37(9): 1785-1795.
  • 3A MADABHUSHI, D N METAXAS. Combining low-high-level and empirical domain knowledge for automated segmentation of ultrasonic breast lesions[J]. IEEE Trails Meal Imaging, 2003, 22(2): 155-169.
  • 4P K SAHA, J K UDUPA. Relative Fuzzy Connectedness among Multiple Objects: Theory, Algorithms, and Applications in Image Segmentation[J]. Computer Vision snd Image Understanding, :2001, 82(1): 42-56.
  • 5V VAPNIK. The Nature of Statistical Learning Theory[M]. New York, NY: Springer-Verlag. 1995.
  • 6A B A Graf, A J SMOLA, S BORER. Classification in a normalized feature space using support vector machines[J]. IEEE Transactions on Neural Networks, 2003, 14 (3): 597--605.
  • 7HSU Chih-wei, CHANG Chih-chung, LIN Chih-jen. A Practical Guide to Support Vector Classification[BB/OL]. http://www.csie.ntu.edu.tw/-cjlin/papers/guide/guide.pdf, 2003-08-10/2004-11-10.
  • 8C.A.GLASBEY.An analysis of histogram based thresholding algorithms [J].CVGIP:Graphical Models and Image Processing,1993,55(6):532-537.
  • 9Sun-gu SUN,Hyunwook PARK.Segmentation of forward-looking infrared image using fuzzy thresholding and edge detection [J].Optical Engineering,2001,40(11):2638-2645.
  • 10Wen-nung LIE .Automatic target segmentation by locally adaptive image thresholding [J].IEEE Trans on Image Processing,1995,4(7):1036-1041.

共引文献14

同被引文献294

引证文献2

二级引证文献11

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