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Main Authors: Zhao, Jiqian, Xu, An-Bao
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.18003
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author Zhao, Jiqian
Xu, An-Bao
author_facet Zhao, Jiqian
Xu, An-Bao
contents In recent years, there has been a noteworthy focus on infrared small target detection, given its vital importance in processing signals from infrared remote sensing. The considerable computational cost incurred by prior methods, relying excessively on nuclear norm for noise separation, necessitates the exploration of efficient alternatives. The aim of this research is to identify a swift and resilient tensor recovery method for the efficient extraction of infrared small targets from image sequences. Theoretical validation indicates that smaller singular values predominantly contribute to constructing noise information. In the exclusion process, tensor QR decomposition is employed to reasonably reduce the size of the target tensor. Subsequently, we address a tensor $L_{2,1}$ Norm Minimization via T-QR (TLNMTQR) based method to effectively isolate the noise, markedly improving computational speed without compromising accuracy. Concurrently, by integrating the asymmetric spatial-temporal total variation regularization method (ASSTV), our objective is to augment the flexibility and efficacy of our algorithm in handling time series data. Ultimately, our method underwent rigorous testing with real-world data, affirmatively showcasing the superiority of our algorithm in terms of speed, precision, and robustness.
format Preprint
id arxiv_https___arxiv_org_abs_2402_18003
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Infrared Small Target Detection via tensor $L_{2,1}$ norm minimization and ASSTV regularization: A Novel Tensor Recovery Approach
Zhao, Jiqian
Xu, An-Bao
Numerical Analysis
In recent years, there has been a noteworthy focus on infrared small target detection, given its vital importance in processing signals from infrared remote sensing. The considerable computational cost incurred by prior methods, relying excessively on nuclear norm for noise separation, necessitates the exploration of efficient alternatives. The aim of this research is to identify a swift and resilient tensor recovery method for the efficient extraction of infrared small targets from image sequences. Theoretical validation indicates that smaller singular values predominantly contribute to constructing noise information. In the exclusion process, tensor QR decomposition is employed to reasonably reduce the size of the target tensor. Subsequently, we address a tensor $L_{2,1}$ Norm Minimization via T-QR (TLNMTQR) based method to effectively isolate the noise, markedly improving computational speed without compromising accuracy. Concurrently, by integrating the asymmetric spatial-temporal total variation regularization method (ASSTV), our objective is to augment the flexibility and efficacy of our algorithm in handling time series data. Ultimately, our method underwent rigorous testing with real-world data, affirmatively showcasing the superiority of our algorithm in terms of speed, precision, and robustness.
title Infrared Small Target Detection via tensor $L_{2,1}$ norm minimization and ASSTV regularization: A Novel Tensor Recovery Approach
topic Numerical Analysis
url https://arxiv.org/abs/2402.18003