红外技术, 2017, 39 (5): 414, 网络出版: 2017-06-06  

一种改进的基于局部特征的红外弱目标提取方法

An Improved Infrared Weak Target Extraction Method Based on Local Features
作者单位
西安科技大学电气与控制工程学院, 陕西 西安 710054
摘要
针对红外图像中背景与目标的复杂性和多样性给弱目标检测带来的困难, 提出基于局部方差的二维最大熵分割与遗传算法相结合的阈值分割方法。本文对变电站绝缘套管的红外图像进行了处理, 首先采用形态学顶帽变换的方法对其进行增强, 然后对图像进行局部方差映射并建立二维直方图, 最后结合遗传算法计算出二维最大熵分割阈值进而实现分割。实验结果表明, 该方法改善了红外弱目标的提取效果, 大大提高了阈值计算的效率, 待提取目标越小, 遗传算法的作用越能得到体现。
Abstract
The complexity and diversity of the background and targets in the infrared images brought difficulties to the weak target detection. In order to overcome this deficiency, a 2-D maximum entropy threshold segmentation method based on local variance is proposed, which is combined with genetic algorithm. In this paper, the infrared image of Substation Insulation casing is processed. At first, the image is enhanced by using the method of morphological Tophat transform. Then, Local variance mapping for image is made and 2-D histogram is established. Finally the combination of 2-D maximum entropy and genetic algorithm is used to calculate the optimal segmentation threshold and actualize threshold segmentation. The experimental results show that this algorithm can improve the extraction effect of infrared weak target and greatly improves the efficiency of threshold calculation. The smaller the target is, the greater role the genetic algorithm plays.
参考文献

[1] 李吉成, 沈振康, 李秋华. 强背景杂波条件下运动的弱小目标检测方法[J].红外与激光工程, 2005, 34(2): 208-211.

    LI Jicheng, SHEN Zhenkang, LI Qiuhua. Moving and weak target detection in heavy clutter background[J]. Infrared and Laser Engineering, 2005, 34(2): 208-211.

[2] 李佐勇, 刘传才, 程勇, 等. 红外图像的统计阈值分割方法 [J].计算机科学, 2010, 37(1): 282-286, 298.

    LI Zuoyong, LIU Chuancai, CHENG Yong, et al. Statistical Thresholding Method for Infrared Images[J]. Computer Science, 2010, 37(1): 282-286, 298.

[3] Ye Bin, Peng jiaxiong. Application of the order morphology filtering on detecting of small target and point target[C]//Proc. SPIE, 2001, 4554: 94-99.

[4] 朱立, 盛文, 彭复员. 基于图像纹理频谱的弱目标自动检测 [J].红外与激光工程, 2001, 30(10): 374-376.

    ZHU Li, SHENG Wen, PENG Fuyuan. Automatic faint target detection based on image texture spectrum[J]. Infrared and Laser Engineering, 2001, 30(10): 374-376.

[5] 李柯, 黄席樾, 李建科, 等. 基于分形学理论的红外检测算法 [J].激光与红外, 2009, 39(10): 1115-1118.

    LI Ke, HUANG Xiyue, LI Jianke, et al. Infrared Target Detection Algorithm Based on Fractal Theory[J]. Laser and Infrared, 2009, 39(10): 1115-1118.

[6] 张强, 蔡敬菊, 张启衡, 等. 基于局部极大值的红外弱小目标分割方法[J].红外技术, 2011, 33(1): 41-44.

    ZHANG Qiang, CAI Jingju, ZHANG Qiheng, et al. Small Dim Infrared Targets Segmentation Method Based on Local Maximum[J]. Infrared Technology, 2011, 33(1): 41-44.

[7] 李涛. 数字图像处理之红外弱目标分割方法研究 [M].成都: 西南交通大学出版社, 2016.

    LI Tao. Research on Infrared Weak Target Segmentation Method for Digital Image Processing[M]. Chengdu: Southwest Jiaotong University Press,2016

[8] 张铮, 徐超, 任淑霞, 等. 数字图像处理与机器视觉 [M].北京: 人民邮电出版社, 2014.

    ZHANG Zheng, XU Chao, REN Shuxia, et al. Digital Image Processing and Machine Vision[M]. Beijing: Posts and Telecom Press, 2014.

[9] Wilhelmus A. C. M. Messelink, Klamer Schutte. Feature-based detection of land mines in infrared images[C]//Proc. SPIE, 2002, 4742: 108-119.

[10] 杨金龙, 张光南, 厉树忠. 基于二维直方图的图像分割算法研究 [J]. 激光与红外, 2008, 38(4): 400-403.

    YANG Jinlong, ZHANG Guangnan, LI Shuzhong.Study of Image Segmentation Algorithm Based on Two-dimensional Histogram[J]. Laser and Infrared, 2008, 38(4): 400-403.

[11] 许立腾, 徐向民. 基于二维最大熵阈值分割的钙化点检测算法 [J].计算机仿真, 2010, 27(9): 55-257, 327.

    XU Liteng, XU Xiangmin. A Calcification Detection Method Based on Two-Dimensional Entropic Thresholding[J]. Computer Simulation, 2010, 27(9): 55-257, 327.

[12] 欧萍, 贺电. 遗传算法粒在二维最大熵图像分割中的应用 [J].计算机仿真, 2011, 28(1): 294-297, 343.

    OU Ping, HE Dian.2-D Maximum Entropy Method of Image Segmentation Based on Genetic Algorithm[J]. Computer Simulation, 2011, 28(1): 294-297, 343.

王媛彬, 尹阳. 一种改进的基于局部特征的红外弱目标提取方法[J]. 红外技术, 2017, 39(5): 414. WANG Yuanbin, YIN Yang. An Improved Infrared Weak Target Extraction Method Based on Local Features[J]. Infrared Technology, 2017, 39(5): 414.

关于本站 Cookie 的使用提示

中国光学期刊网使用基于 cookie 的技术来更好地为您提供各项服务,点击此处了解我们的隐私策略。 如您需继续使用本网站,请您授权我们使用本地 cookie 来保存部分信息。
全站搜索
您最值得信赖的光电行业旗舰网络服务平台!