Gao Kun, Liu Ying, Wang Li-jing, Zhu Zhen-yu, Cheng Hao-bo
Guang Pu Xue Yu Guang Pu Fen Xi. 2015 Oct;35(10):2846-50.
With the development of spectral imaging technology, hyperspectral anomaly detection is getting more and more widely used in remote sensing imagery processing. The traditional RX anomaly detection algorithm neglects spatial correlation of images. Besides, it does not validly reduce the data dimension, which costs too much processing time and shows low validity on hyperspectral data. The hyperspectral images follow Gauss-Markov Random Field (GMRF) in space and spectral dimensions. The inverse matrix of covariance matrix is able to be directly calculated by building the Gauss-Markov parameters, which avoids the huge calculation of hyperspectral data. This paper proposes an improved RX anomaly detection algorithm based on three-dimensional GMRF. The hyperspectral imagery data is simulated with GMRF model, and the GMRF parameters are estimated with the Approximated Maximum Likelihood method. The detection operator is constructed with GMRF estimation parameters. The detecting pixel is considered as the centre in a local optimization window, which calls GMRF detecting window. The abnormal degree is calculated with mean vector and covariance inverse matrix, and the mean vector and covariance inverse matrix are calculated within the window. The image is detected pixel by pixel with the moving of GMRF window. The traditional RX detection algorithm, the regional hypothesis detection algorithm based on GMRF and the algorithm proposed in this paper are simulated with AVIRIS hyperspectral data. Simulation results show that the proposed anomaly detection method is able to improve the detection efficiency and reduce false alarm rate. We get the operation time statistics of the three algorithms in the same computer environment. The results show that the proposed algorithm improves the operation time by 45.2%, which shows good computing efficiency.
随着光谱成像技术的发展,高光谱异常检测在遥感图像处理中的应用越来越广泛。传统的RX异常检测算法忽略了图像的空间相关性。此外,它不能有效地降低数据维度,处理时间成本过高,在高光谱数据上的有效性较低。高光谱图像在空间和光谱维度上遵循高斯 - 马尔可夫随机场(GMRF)。通过构建高斯 - 马尔可夫参数可以直接计算协方差矩阵的逆矩阵,避免了高光谱数据的巨大计算量。本文提出了一种基于三维GMRF的改进RX异常检测算法。利用GMRF模型对高光谱图像数据进行模拟,采用近似最大似然法估计GMRF参数。利用GMRF估计参数构建检测算子。将检测像素作为局部优化窗口的中心,该窗口称为GMRF检测窗口。利用均值向量和协方差逆矩阵计算异常程度,均值向量和协方差逆矩阵在窗口内计算。随着GMRF窗口的移动,逐像素地对图像进行检测。利用AVIRIS高光谱数据对传统RX检测算法、基于GMRF的区域假设检测算法和本文提出的算法进行了模拟。模拟结果表明,所提出的异常检测方法能够提高检测效率并降低误报率。我们在相同的计算机环境下得到了三种算法的运行时间统计结果。结果表明,所提出的算法将运行时间提高了45.2%,具有良好的计算效率。