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Orthogonal Subspace Projection Target Detector for Hyperspectral Anomaly Detection

Chein‐I Chang, Hongju Cao, Meiping Song

2021IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing52 citationsDOIOpen Access PDF

Abstract

Orthogonal subspace projection (OSP) is a versatile hyperspectral imaging technique which has shown great potential in dimensionality reduction, target detection, spectral unmixing, etc. However, due to its inherent requirement of prior target knowledge, OSP has not been explored in anomaly detection. This article takes advantage of an unsupervised OSP-based algorithm, automatic target generation process (ATGP), and a recently developed OSP-go decomposition (OSP-GoDec) along with data sphering (DS) to make OSP applicable to anomaly detection. Its idea is to implement ATGP on the background (BKG) and target subspaces constructed from the low-rank matrix L and sparse matrix S generated by OSP-GoDec to derive an OSP-based anomaly detector (OSP-AD). In particular, OSP-AD also includes DS to remove BKG interference from the target subspace so as to enhance anomaly detection. Surprisingly, operating data samples on different constructions of the BKG subspace and the target subspace yields various versions of OSP-AD. Experiments show that given an appropriate construction of the BKG subspace and the target subspace, OSP-AD can be shown to outperform existing anomaly detectors including Reed-Xiaoli anomaly detector and collaborative representation-based anomaly detector (CRD).

Topics & Concepts

Subspace topologyAnomaly detectionHyperspectral imagingLinear subspaceDetectorProjection (relational algebra)Anomaly (physics)Pattern recognition (psychology)Computer scienceArtificial intelligenceDimensionality reductionOrthographic projectionMathematicsAlgorithmPhysicsTelecommunicationsCondensed matter physicsGeometryRemote-Sensing Image ClassificationRemote Sensing and Land UseSparse and Compressive Sensing Techniques