光学技术, 2015, 41 (1): 16, 网络出版: 2015-04-14  

一种改进的LPD高光谱图像异常检测算法

An anomaly detection method for hyperspectral image based on improved LPD
作者单位
苏州大学物理科学与技术学院, 江苏 苏州 215006
摘要
在低概率检测(LPD) 算法中,当选取的特征向量数目等于背景地物种类时,算法的检测效果比较理想,然而背景地物的种类数通常不知道,因此难以确定特征向量的数量.针对这一问题,对LPD算法进行了改进:首先用迭代误差分析(IEA)方法提取端元,然后在提取的端元中选择出与背景地物光谱相近的端元,并用它们构成背景矩阵,进而用该矩阵构造出正交投影算子,最后将该投影算子代入到LPD算法中进行目标检测.实验结果表明,该方法可以更有效地抑制背景,降低虚警率,提高检测性能.
Abstract
Only the number of the feature vectors elected is equal to the types of the ground objects,the low probability detection(LPD) has a good effect. The species of background objects usually do not know.It is hard to determine the number of the feature vectors.In order to solve the problem,a novel anomaly detection method based on improved LPD is presented.The iterative error analysis(IEA) algorithm is used to extract the endmembers,and which are similar to the spectrum of background objects are chosen to make up the background matrix.The matrix is applied to build the orthogonal projection operator.The operator is used in the LPD to achieve the target detection.Experimental results show that the proposed method can restrain the background effectively and improve the detection performance obviously.
参考文献

[1] Manuel J M,Plaza A,et al.Analysis and optimizations of global and local versions of the rx algorithm for anomaly detection in hyperspectral data[J].IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.2013,6(2):801-814.

[2] 王玉磊,赵春晖,王江洪.基于低概率检测的高光谱异常目标检测算法研究[J].黑龙江大学自然科学报,2010,27(3):411-416.

    Wang Y L,Zhao C H,Wang J H.Anomaly detection for hyperspectral image based on low probability detection[J].Journal of Natural Science of Heilongjiang University,2010,27(3):411-416.

[3] Stein D W J,Beaven S G,et al.Anomaly detection from hyperspectral imagery[J].IEEE Signal Processing Magazine,2002,19(1):58-69.

[4] 马丽,田金文.基于局部能量最大可分的高光谱图像异常检测算法[J].遥感学报,2008,12(3):420-426.

    Ma L,Tian J W.Anomaly detection for hyperspectral image based on local energy maximal division[J].Journal of Remote Sensing,2008,12(3):420-426.

[5] 张立燕,谌德荣,陶鹏.基于顶点成分分析的高光谱图像低概率异常检测方法研究[J].宇航学报,2007,28(5):1262-1265.

    Zhang L Y,Shen D R,Tao P.Anomaly detection for hyperspectral image based on vertex content analysis[J].Journal of Astronautics,2007,28(5):1262-1265.

[6] Li H L,Zhang L P.A hybrid automatic endmember extraction algorithm based on local window[J].IEEE Transactions on Geoscience and Remote Sensing,2011,49(11):4223-4238.

[7] 董超,赵慧洁,王维,等.采用局部正交子空间投影的高光谱图像异常检测[J].光学精密工程,2009,17(8):2004-2010.

    Dong C,Zhao H J,Wang W,et al.Hyperspectral image anomaly detection based on local orthogonal subspace projection[J].Optics and Precision Engineering,2009,17(8):2004-2010.

[8] Jensen J O,Ren H,et al.Estimation of subpixel target size for remotely sensed imagery[J].IEEE Transactions on Geoscience and Remote Sensing,2004,42(6):1309-1320.

[9] 张翔,张建奇,秦翰林,等.采用多分辨率分解的高光谱图像异常检测[J].红外与激光工程,2011,40(3):570-575.

    Zhang X,Zhang J Q,Qin H L,et al.Anomaly detection for hyperspectral image based on multiresolution decomposition[J].Infrared and Laser Engineering,2011,40(3):570-575.

[10] 张兵,高连如.高光谱图像分类与目标探测[M].北京:科学出版社.2011.

    Zhang B,Gao L R.Hyperspectral image classification and target detection[M].Beijing:Science Press,2011.

程凯, 李成金, 赵勋杰. 一种改进的LPD高光谱图像异常检测算法[J]. 光学技术, 2015, 41(1): 16. CHENG Kai, LI Chengjin, ZHAO Xunjie. An anomaly detection method for hyperspectral image based on improved LPD[J]. Optical Technique, 2015, 41(1): 16.

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