Flexible Hyperspectral Anomaly Detection Using Weighted Nuclear Norm

IF 0.7 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Lei Li, Yuemei Ren, Jinming Ma
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引用次数: 0

Abstract

It has been demonstrated that nuclear-norm-based low-rank representation is capable of modeling cluttered backgrounds in hyperspectral images (HSIs) for robust anomaly detection. However, minimizing the nuclear norm regularizes each singular value equally during rank reduction, which restricts the capacity and flexibility of modeling the major structures of the background. To address this problem, we propose detection of anomaly pixels in HSIs using the weighted nuclear norm, which can preserve the major singular values during rank reduction. We present a down-up sampling scheme to remove plausible anomaly pixels from the image as much as possible and learn a robust principal component analysis (PCA) background dictionary. From a dictionary, we develop a weighted nuclear-norm minimization model to represent the background with a low-rank coefficients matrix that can be effectively optimized using the standard alternating direction method of multipliers (ADMM). Due to the flexible modeling capacity using the weighted nuclear norm, anomaly pixels can be distinguished from the background with the reconstruction error. The experimental results on two real HSIs datasets demonstrate the effectiveness of the proposed method for anomaly detection.
基于加权核范数的柔性高光谱异常检测
研究表明,基于核范数的低秩表示能够对高光谱图像(hsi)中的杂乱背景进行建模,从而实现鲁棒异常检测。然而,核范数的最小化在降阶过程中对每个奇异值进行了等价的正则化,限制了背景主要结构建模的能力和灵活性。为了解决这个问题,我们提出了使用加权核范数检测hsi中的异常像素,该方法可以在降阶过程中保留主要的奇异值。我们提出了一种向下采样方案,以尽可能多地从图像中去除可能的异常像素,并学习一个鲁棒主成分分析(PCA)背景字典。从字典中,我们开发了一个加权核范数最小化模型,以低秩系数矩阵表示背景,该模型可以使用标准的乘法器交替方向方法(ADMM)进行有效优化。利用加权核范数灵活的建模能力,可以利用重建误差将异常像元与背景区分开。在两个真实hsi数据集上的实验结果证明了该方法的有效性。
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来源期刊
CiteScore
1.50
自引率
14.30%
发文量
89
期刊介绍: JACIII focuses on advanced computational intelligence and intelligent informatics. The topics include, but are not limited to; Fuzzy logic, Fuzzy control, Neural Networks, GA and Evolutionary Computation, Hybrid Systems, Adaptation and Learning Systems, Distributed Intelligent Systems, Network systems, Multi-media, Human interface, Biologically inspired evolutionary systems, Artificial life, Chaos, Complex systems, Fractals, Robotics, Medical applications, Pattern recognition, Virtual reality, Wavelet analysis, Scientific applications, Industrial applications, and Artistic applications.
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