光子学报, 2019, 48 (9): 0910001, 网络出版: 2019-10-12   

基于自适应双层TDLMS滤波的红外小目标检测

Infrared Small Target Detection Based on Adaptive Doublelayer TDLMS Filter
作者单位
1 陕西师范大学 物理学与信息技术学院, 西安 710119
2 西安航空学院 机械工程学院, 西安 710077
摘要
提出了一种自适应滤波的红外小目标检测算法, 该方法由背景去除与目标提取两层二维最小均方滤波器构成.分别引入背景模板与目标模板, 结合二维最小均方滤波方法对原始红外图像进行处理, 有效地剔除了背景噪声与杂波, 同时尽可能地保留了目标信息.在算法实现过程中, 提出了一种步长自动调整算法, 通过图像的统计参数自适应调整步长的大小, 可迭代出TDLMS滤波器的最优权值, 再与权重模板相融合, 有效增强了目标的检测效果.实验结果表明, 该方法能够适应不同背景下的目标检测, 有效提高了红外小目标的检测性能.
Abstract
An infrared small target detection algorithm based on adaptive filter is proposed, which consists of twolayer Two Dimensional Least Mean Square Filter (TDLMS) filters: background removal and target extraction. The background template and target template are introduced, and the original infrared image is processed by TDLMS filtering method. The background noise and clutter are eliminated effectively, while the target information is preserved as much as possible. In the implementation of TDLMS algorithm, an automatic stepsize adjustment algorithm is proposed. The optimal weights of TDLMS filters can be iterated by adjusting the adaptive stepsize through the statistical parameters of the image, and then fused with the weight template, which effectively enhances the detection effect of the target. The experimental results show that the method can adapt to target detection under different background, and effectively improve the detection performance of small infrared targets.
参考文献

[1] 张恒,雷志辉,丁晓华.一种改进的中值滤波算法[J].中国图象图形学报, 2004, 9(4): 408411.

    ZHANG Heng, LEI Zhihui, DING Xiaohua. An improved method of median filter[J]. Journal of Image and Graphics, 2004, 9(4): 408411.

[2] WANG Z, ZHANG D. Progressive switching median filter for the removal of impulse noise from highly corrupted images[J]. IEEE Transactions on Circuits and Systems II: Analog and Digital Signal Processing, 1999, 46(1): 7880.

[3] KHRYASHCHEV V V, PRIOROV A L, APALKOV I V, et al. Image denoising using adaptive switching median filter[C]. International Conference on Image Processing, 2005, 1: I117.

[4] SRINIVASAN K S, EBENEZER D. A new fast and efficient decisionbased algorithm for removal of highdensity impulsenoises[J]. IEEE Signal Processing Letters, 2007, 14(3): 189192.

[5] 何海明, 齐冬莲, 张国月,等. 快速高效去除图像椒盐噪声的均值滤波算法[J]. 激光与红外, 2014, 4: 469472.

    HE Haiming, QI Donglian, ZHANG Guoyue, et al. Fast and efficient mean filtering algorithm for removing the salt and pepper noise[J]. Laser and Infrared, 2014, 4: 469472

[6] 杨元庆, 张志利, 侯传勋. 一种近地背景下红外弱小目标检测预处理算法[J]. 红外技术, 2018, 40(8): 812817.

    YANG Yuanqing,ZHANG Zhili,HOU Chuanxun.A preprocessing algorithm for infrared smalltarget detection in the nearearth background[J]. Infrared Technology, 2018, 40(8): 812817

[7] 李炎冰, 吕健, 仇振安,等. 基于TopHat变换和马尔可夫随机场相结合的背景抑制算法[J]. 电光与控制, 2015,11: 4851.

    LI Yanbing, LV Jian, CHOU Zhenan, et al. A background suppression algorithm based on tophat transform and markov random field[J]. Electronics Optics & Control, 2015, 11: 4851.

[8] BAI X, ZHOU F, XIE Y, et al. Modified tophat transformation based on contour structuring element to detect infrared small target[C]. IEEE Conference on Industrial Electronics and Applications, 2008, 3: 575579.

[9] BAI X, ZHOU F. Analysis of new tophat transformation and the application for infrared dim small targetdetection[J]. Pattern Recognition, 2010, 43(6): 21452156.

[10] HAN J, MA Y, ZHOU B, et al. A robust infrared small target detection algorithm based on human visual system[J]. IEEE Geoscience and Remote Sensing Letters, 2014, 11(12): 21682172.

[11] HOU X, ZHANG L. Saliency detection: a spectral residual approach[C]. IEEE Conference on Computer Vision and Pattern Recognition, 2007, 6: 18.

[12] GUO C, MA Q, ZHANG L.Spatiotemporal saliency detection using phase spectrum of quaternion fourier transform[C]. IEEEConference on Computer Vision and Pattern Recognition, 2008, 6: 18.

[13] HADHOUD M M, THOMAS D W. The twodimensional adaptive LMS(TDLMS) algorithm[J]. IEEE Transactions on Circuits and Systems, 1988, 35(5): 485494.

[14] FFRENCH P A, ZEIDLER J H, KU W H. Enhanced detectability of small objects in correlated clutter using an improved 2D adaptive lattice algorithm[J]. IEEE Transactions on Image Processing, 1997, 6(3): 383397.

[15] CAO Y, LIU R M, YANG J. Small target detection using twodimensional least mean square (TDLMS) filter based on neighborhood analysis[J]. International Journal of Infrared & Millimeter Waves, 2008, 29(2): 188200.

[16] BAE T, KIM Y, AHN S,et al. A novel twodimensional LMS (TDLMS) using subsampling mask and stepsize index for small target detection[J]. IEEE Electronics Express, 2010, 7(3): 112117.

[17] BAE T, KIM Y, AHN S,et al. An efficient twodimensional least mean square ( TDLMS) based on block statistics for small target detection[J]. Journal of Infrared Millimeter&Terahertz Waves, 2009, 30(10): 10921101.

[18] ZHAO Y, PAN H, DU C,et al. Bilateral twodimensional least mean square filter for infrared small target detection[J]. Infrared Physics & Technology, 2014, 65: 1723.

[19] 王东, 王敏. 基于多滤波算法融合的红外小目标检测[J]. 应用光学, 2017, 1: 106113.

    WANG Dong, WANG Ming. Detection of infrared small target based on fusion of multifilters[J]. Journal of Applied Optics, 2017, 1: 106113.

[20] BAI X, ZHOU F, XUE B. Infrared dim small target enhancement using toggle contrastoperator[J]. Infrared Physics & Technology, 2012, 55(23): 177182.

[21] 王喜军. 基于自适应TDLMS算法的弱小目标检测算法[J]. 电光与控制, 2018, 25(3): 7880.

    WANG Xijun.Dim small target detection based on adaptive TDLMS algorithm[J]. Electronics Optics & Control, 2018, 25(3): 7880.

张艺璇, 李玲, 辛云宏. 基于自适应双层TDLMS滤波的红外小目标检测[J]. 光子学报, 2019, 48(9): 0910001. ZHANG Yixuan, LI Ling, XIN Yunhong. Infrared Small Target Detection Based on Adaptive Doublelayer TDLMS Filter[J]. ACTA PHOTONICA SINICA, 2019, 48(9): 0910001.

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