论文:2014,Vol:32,Issue(4):569-575
引用本文:
高颖, 王阿敏, 支朋飞, 葛飞. 基于区域分割与提升小波变换的图像融合算法[J]. 西北工业大学
Gao Ying, Wang Amin, Zhi Pengfei, Ge Fei. Image Fusion Algorithm Based on Region Segmentation and Lifting Wavelet Transform[J]. Northwestern polytechnical university

基于区域分割与提升小波变换的图像融合算法
高颖1, 王阿敏2, 支朋飞1, 葛飞1
1. 西北工业大学 航海学院, 陕西 西安 710072;
2. 中航金属材料理化检测科技有限公司, 陕西 西安 710018
摘要:
针对精确制导武器系统中,利用传统方法获取的融合图像使得红外目标模糊、识别率低、定位性差及不能继承可见光图像色彩特性而出现光谱扭曲与失真的现象,提出了一种基于区域分割和提升小波变换的红外与可见光图像融合方法。首先结合区域生长与边缘提取图像分割法,将红外图像背景区域与目标区域分开;其次采用像素邻域能量取大法,将红外目标区域映射到可见光背景中;最后将上步得到的融合图像与原图像进行低频加权,高频平均梯度的提升小波融合变换,防止因图像分割所形成的拼接错误而导致重要信息丢失现象。实验结果表明:融合后的图像,目标凸显,背景自然,能够达到准确定位与快速识别的目的,并对隐藏目标的检测有着重要的指导意义。
关键词:    边缘检测    图像分割    提升小波变换    图像融合   
Image Fusion Algorithm Based on Region Segmentation and Lifting Wavelet Transform
Gao Ying1, Wang Amin2, Zhi Pengfei1, Ge Fei1
1. College of Marine Science and Technology, Northwestern Polytechnical University, Xi'an 710072, China;
2. AVIC Metal Test Technology Company Limited, Xi'an 710018, China
Abstract:
As regards precision-guided weapons systems, the fused images obtained by traditional methods give fuzzy detection, low recognition rate and poor positioning for infrared target;meanwhile they are unable to highlight the visible color characteristics;thus spectral distortion results. We present a fusion method of region-based segmen-tation and lifting wavelet transform for infrared and visible image. We do three things: (1) making the infrared background and destination areas separate with image segmentation methods of regional growth combined with edge detection;(2) using the maximum energy around pixel neighborhood to make infrared target mapped to the visible background;(3) for the fused image acquired by the step above-mentioned steps and the original images, utilizing the lifting wavelet transform about the weighted algorithm for low frequency and the average gradient for high fre-quency, thus avoiding important information being missed because of segmentation error. The experimental results and their analysis show preliminarily that:the fused image can highlight target, make background natural, achieve the purpose of accurate positioning and rapid identification, thus having an important indication significance for de-tecting the hidden targets.
Key words:    algorithms    calculations    conformal mapping    edge detection    flowcharting    image fusion    image segmentation    medical imaging    multi-resolution    remote sensing    target tracking    wavelet transforms   
收稿日期: 2013-11-07     修回日期:
DOI:
基金项目: 航天科技创新基金(CASC201102)资助
通讯作者:     Email:
作者简介: 高颖(1965-),西北工业大学副教授、硕士生导师,主要从事信息融合及虚拟现实等的研究。
相关功能
PDF(417KB) Free
打印本文
把本文推荐给朋友
作者相关文章
高颖  在本刊中的所有文章
王阿敏  在本刊中的所有文章
支朋飞  在本刊中的所有文章
葛飞  在本刊中的所有文章

参考文献:
[1] Yu N N, Qiu T S. Fusion Technology of Infrared and Visible Images in Compressive Sensing[J]. Signal Processing, 2012, 28 (5): 692-698
[2] 李勇燕. 基于加权平均的红外图像增强算法研究[J]. 长沙大学学报, 2011, 5(3): 50-52 Li Yongyan. Research on Enhance Algorithm Based on Weighted Average about Infrared Image[J]. Journal of Changsha University, 2011, 25(2): 50-52 (in Chinese)
[3] 杨开睿. 一种自适应权值的 PCA 算法[J]. 计算机工程与应用, 2012, 48(3): 189-191 Yang Kairui. Adaptively Weighted PCA Algorithm[J]. Computer Engineering and Applications, 2012, 48 (3): 189-191 (in Chinese)
[4] 王加, 蒋晓瑜. 基于感知颜色空间的灰度可见光与红外图像融合算法[J]. 光电子·激光, 2008, 19(9): 1261-1264 Wang Jia, Jiang Xiaoyu. An Algorithm to Fuse Gray-Scale Infrared and Visible Light Image Based on Perceptual Color Space [J]. Journal of Optoelectronics, 2008, 19(9): 1261-1264 (in Chinese)
[5] Wang W C, Chang F L. A Multi-Focus Image Fusion Method Based on Laplacian Pyramid[J]. Journal of Computers, 2011, 6 (12): 2559-2566
[6] 陈浩, 王延杰. 基于拉普拉斯金字塔变换的图像融合算法研究[J]. 激光与红外, 2009, 39(4): 439-442 Chen Hao, Wang Yanjie. Research on Image Fusion Algorithm Based on Laplacian Pyramid Transform[J]. Laser & Infrared,2009, 39(4): 439-442 (in Chinese)
[7] Zhao J, Feng H, Xu Z, et al., Detail Enhanced Multi-Source Fusion Using Visual Weight Map Extraction Based on Multi Scale Edge Preserving Decomposition[] ∥Optics Communications, 2012
[8] Saeedi J, Faez K. A New Pan-Sharpening Method Using Multiobjective Particle Swarm Optimization and the Shiftable Contourlet Transform[J]. Photogrammetry & Remote Sensing, 2011 (66): 365-381
[9] Pajares G, Cruz J. A Wavelet-Based Image Fusion Tutorial[J]. Pattern Recognition, 2004, 37(9): 1855-1872
[10] Lewis J J, Ocallaghan R J, Nikolov S G. Pixel-and Region-Based Image Fusion with Complex Wavelets[J]. Information Fusion,2007, 8(2): 119-130
[11] Liu Kun, Guo Lei, Li Huihui, et al. Fusion of Infrared and Visible Light Images Based on Region Segmentation[J]. Chinese Journal of Aeronautics, 2009(22): 75-80
[12] 高颖, 王阿敏, 郭淑霞等. 改进的小波变换算法在图像融合中的应用[J]. 激光技术, 2013, 37(5): 690-695 Gao Ying, Wang Amin, Guo Shuxia, et al. The Application of Improved Wavelet Transform Algorithm in Image Fusion[J]. Laser Technology, 2013, 37(5): 690-695 (in Chinese)
[13] 叶传奇, 王宝树. 一种基于区域特性的红外与可见光图像融合算法[J]. 光子学报, 2009, 38(6): 1498-1502 Ye Chuanqi, Wang Baoshu. Fusion Algorithm of Infrared and Visible Images Based on Region Feature[J]. Acta Photonica Sinica, 2009, 38(6): 1498-1502 (in Chinese)
[14] 龚昌 来. 一种改进的基于局部能量图像融合算法[J]. 光电工程, 2008, 35(11): 106-110 Gong Changlai. Improved Image Fusion Algorithm Based on Local Energy[J]. Opto-Electronic Engineering, 2008, 35 (11):106-110 (in Chinese)
[15] Lewis J, O'Callaghan R. Pixel and Region Based Image Fusion with Complex Wavelets[J]. Information Fusion, 2007, 8(2):119-130
[16] Petrovic V S, Xydeas C S. Gradient-Based Multi-Resolution Image Fusion[J]. IEEE Trans on Image Processing 2004, 13 (2):228-237
[17] Yin Chen. Theoretical Analysis of an Information-Based Quality Measure for Image Fusion[J]. Information Fusion, 2008, 9 (2): 161-175