Litcius/Paper detail

Spectral-Difference Low-Rank Representation Learning for Hyperspectral Anomaly Detection

Xiangrong Zhang, Xiaoxiao Ma, Ning Huyan, Jing Gu, Xu Tang, Licheng Jiao

2021IEEE Transactions on Geoscience and Remote Sensing41 citationsDOI

Abstract

Anomaly detection of a hyperspectral image without any prior information has attracted much more attention in remote sensing image understanding and interpretation, which aims at determining whether a sample belongs to background or anomaly. Low-rank dictionary learning plays an important role in exploiting the low-rank prior of background for hyperspectral image (HSI) anomaly detection. In this article, the low-rank dictionary learning is introduced to learn a dictionary which can reconstruct the background positively, while anomaly cannot. Considering the high correlation of data especially between the adjacent bands, we resort to spectral-difference low-rank dictionary representation learning for global background modeling which can fully exploit the low-rank prior of background. Then, the residual matrix is used to distinguish anomaly. Different from the existing anomaly detection methods based on dictionary which is constructed or learned in a separated step, our proposed model can simultaneously learn the dictionary and separate anomaly by iterative learning. The experimental results on five real data sets demonstrate the superior performance of the proposed method for hyperspectral anomaly detection compared with other state-of-the-art algorithms.

Topics & Concepts

Hyperspectral imagingAnomaly detectionAnomaly (physics)Pattern recognition (psychology)Artificial intelligenceRank (graph theory)Computer scienceResidualFeature (linguistics)Representation (politics)MathematicsAlgorithmCombinatoricsPoliticsPhilosophyCondensed matter physicsPhysicsPolitical scienceLinguisticsLawRemote-Sensing Image ClassificationSparse and Compressive Sensing TechniquesRemote Sensing and Land Use