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Dynamic Low-Rank and Sparse Priors Constrained Deep Autoencoders for Hyperspectral Anomaly Detection

Sheng Lin, Min Zhang, Xi Cheng, Lei Shi, Paolo Gamba, Hai Wang

2023IEEE Transactions on Instrumentation and Measurement46 citationsDOI

Abstract

Linear-based low-rank and sparse models (LRSM) and nonlinear-based deep autoencoder (DAE) models have been proven to be effective for the task of anomaly detection (AD) in hyperspectral images (HSIs). The linear-based LRSM is self-explainable, while it may not characterize the complex scenes well. In contrast, the nonlinear-based DAE is able to extract the discriminative features between the background and anomaly for the complex scenes, whereas it is not self-explainable. To effectively combine the advantages of both, a dynamic low-rank and sparse priors-constrained DAEs (DLRSPs-DAEs) for hyperspectral AD (HAD), in this article, is proposed. In order to utilize the low-rank prior existing in an HSI, a low-rank prior-based DAE (DAE_LR) is designed to generate an excellent background reconstruction effect and terrible anomaly reconstruction performance. Further, to consider the sparsity reflecting the anomalies in the HSI, a DAE that is constrained by the sparse prior obtained by the decomposition of the HSI (DAE_S) is developed. Notably, to make the model more compact, the DAE_LR and DAE_S share a common encoder. To achieve global optimal performance, an end-to-end joint optimization strategy with the consideration of the interaction between the learning of the DAEs and the decomposition of the HSI is proposed. Additionally, to yield better detection performance, a nonlinear fusion strategy is exploited to comprehensively combine the detection results obtained from both the DAE_LR and DAE_S. Extensive experiments conducted on several datasets show that the proposed DLRSPs-DAEs detector achieves tremendous performance with respect to the classical and state-of-the-art detectors.

Topics & Concepts

Hyperspectral imagingAnomaly detectionPattern recognition (psychology)Artificial intelligencePrior probabilityComputer scienceRank (graph theory)MathematicsBayesian probabilityCombinatoricsRemote-Sensing Image ClassificationImage and Signal Denoising MethodsAnomaly Detection Techniques and Applications
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