Sun Siyu, Liu Jun, Zhang Ziwei, Li Wei
IEEE Trans Neural Netw Learn Syst. 2024 Jul;35(7):9787-9799. doi: 10.1109/TNNLS.2023.3236641. Epub 2024 Jul 8.
Hyperspectral anomaly detection, which is aimed at distinguishing anomaly pixels from the surroundings in spatial features and spectral characteristics, has attracted considerable attention due to its various applications. In this article, we propose a novel hyperspectral anomaly detection algorithm based on adaptive low-rank transform, in which the input hyperspectral image (HSI) is divided into a background tensor, an anomaly tensor, and a noise tensor. To take full advantage of the spatial-spectral information, the background tensor is represented as the product of a transformed tensor and a low-rank matrix. The low-rank constraint is imposed on frontal slices of the transformed tensor to depict the spatial-spectral correlation of the HSI background. Besides, we initialize a matrix with predefined size and then minimize its l -norm to adaptively derive an appropriate low-rank matrix. The anomaly tensor is constrained with the l -norm to depict the group sparsity of anomalous pixels. We integrate all regularization terms and a fidelity term into a non-convex problem and develop a proximal alternating minimization (PAM) algorithm to solve it. Interestingly, the sequence generated by the PAM algorithm is proven to converge to a critical point. Experimental results conducted on four widely used datasets demonstrate the superiority of the proposed anomaly detector over several state-of-the-art methods.
高光谱异常检测旨在从空间特征和光谱特征方面将异常像素与周围环境区分开来,因其具有多种应用而备受关注。在本文中,我们提出了一种基于自适应低秩变换的新型高光谱异常检测算法,其中输入的高光谱图像(HSI)被分为背景张量、异常张量和噪声张量。为了充分利用空间光谱信息,背景张量被表示为一个变换张量和一个低秩矩阵的乘积。对变换张量的正面切片施加低秩约束,以描述HSI背景的空间光谱相关性。此外,我们用预定义大小初始化一个矩阵,然后最小化其l范数以自适应地导出一个合适的低秩矩阵。异常张量用l范数进行约束,以描述异常像素的组稀疏性。我们将所有正则化项和一个保真项整合到一个非凸问题中,并开发了一种近端交替最小化(PAM)算法来求解。有趣的是,PAM算法生成的序列被证明收敛到一个临界点。在四个广泛使用的数据集上进行的实验结果表明,所提出的异常检测器优于几种现有方法。