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RPCANet: Deep Unfolding RPCA Based Infrared Small Target Detection

Fengyi Wu, Tianfang Zhang, Lei Li, Yian Huang, Zhenming Peng

2024100 citationsDOIOpen Access PDF

Abstract

Deep learning (DL) networks have achieved remarkable performance in infrared small target detection (ISTD). However, these structures exhibit a deficiency in interpretability and are widely regarded as black boxes, as they disregard domain knowledge in ISTD. To alleviate this issue, this work proposes an interpretable deep network for detecting infrared dim targets, dubbed RPCANet. Specifically, our approach formulates the ISTD task as sparse target extraction, low-rank background estimation, and image reconstruction in a relaxed Robust Principle Component Analysis (RPCA) model. By unfolding the iterative optimization updating steps into a deep-learning framework, time-consuming and complex matrix calculations are replaced by theory-guided neural networks. RPCANet detects targets with clear interpretability and preserves the intrinsic image feature, instead of directly transforming the detection task into a matrix decomposition problem. Extensive experiments substantiate the effectiveness of our deep unfolding framework and demonstrate its trustworthy results, surpassing baseline methods in both qualitative and quantitative evaluations. Our source code is available at https://github.com/fengyiwu98/RPCANet.

Topics & Concepts

InterpretabilityDeep learningComputer scienceArtificial intelligenceTask (project management)Image (mathematics)Feature extractionDeep neural networksArtificial neural networkMatrix (chemical analysis)Pattern recognition (psychology)Machine learningEngineeringComposite materialMaterials scienceSystems engineeringInfrared Target Detection MethodologiesThermography and Photoacoustic TechniquesInfrared Thermography in Medicine
RPCANet: Deep Unfolding RPCA Based Infrared Small Target Detection | Litcius