基于局部能量最大可分的高光谱图像异常检测算法
Anomaly Detection Algorithm for Hyperspectral Images Based on Local Energy Maximal Division
- 2008年第3期 页码:420-427
纸质出版日期: 2008
DOI: 10.11834/jrs.20080357
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纸质出版日期: 2008 ,
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[1]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(03):420-427.
MA Li TIAN Jin-wen. Anomaly Detection Algorithm for Hyperspectral Images Based on Local Energy Maximal Division[J]. Journal of Remote Sensing, 2008,(3):420-427.
提出了一种基于局部能量最大可分的异常检测算法
以滑动窗口中心点作为被检测点
其他点作为背景点
在最优投影方向上
以被检测点与邻域背景的投影能量之比来度量该点异常度。利用窗内投影值分布及与被检测点投影值关系等约束条件
去除异常信息对背景特性统计的影响
以真正反映异常与背景的可分程度。提出有效的多随机窗表决算法
以抑制虚警。实验结果表明
该算法具有较好的鲁棒性
能有效实现复杂未知场景下的异常目标检测。
Hyperspectral images provide significant information about spectral characteristics of the objects in the scene. Anomaly detection is to detect targets whose signatures are spectrally distinct from their surroundings without a priori knowledge.Generally
the prior knowledge of the targets is unknown
and therefore the anomaly detection is very impor- tant and challenging. Constrained energy minimization(CEM)proposed by Chang is a target detection algorithm.It constrains the desired target signature with a specific gain while minimizing the output energy of the whole signatures in the images.The problem is that it needs the signature of desired target as a priori knowledge.Therefore it is not appropriate for anomaly detection. Based on the CEM algorithm
we presents a local energy maximal division(LEMD)algorithm to achieve anomaly detec- tion in this paper. There are four innovations in the algorithm.Firstly
the paper proposes local energy maximal division(LEMD)algo- rithm.It localizes the detection area with a sliding window.The central pixel of the sliding window is regarded as the test- ed pixel
and the other pixels in the window are regarded as background.The idea of the algorithm is to use the maximal projection energy ratio between the tested pixel and the background to measure anomalous degree of the tested pixel. Secondly
the optimal projection vector is composed of the signature of the tested pixel and the inverse of correlation matrix estimated by background pixels.If there are anomalies in the local background
the correlation matrix will be contaminated and the tested anomaly may be missed.To solve the problem
the anomalies in the local background should be found and removed
and the employed method is based on the projection distribution of the local window.Pixel in the background is defined as anomaly if the following condition is satisfied:The projection output of the pixel is similar to that of the tested pixel and much different from that of the most background pixels.Thirdly
false alarms are generally existed in anomaly detection
and the multi-random-window voting method is proposed to control false alarm rate.The method acts on the potential anomalies produced by threshold segmentation.It chooses some local windows selected randomly in the images
and determines the potential anomalies whose anomalous degree is larger than certain threshold in most of the random win- dows as real anomalies.Experimental data are hyperspectral images with 210 bands produced by hyperspectral digital image collection experiment(HYDICE).The comparative experiments between the LEMD algorithm and the well-known RX algorithm indicate that LEMD algorithm is robust and performs better under complex unknown background.
高光谱图像异常检测局部能量最大可分多随机窗表决
hyperspectral imagesanomaly detectionlocal energy maximal division(LEMD)multi-random-window voting
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