Infrared Small Target Detection via Non-Convex Rank Approximation Minimization Joint <i>l</i><sub>2,1</sub> Norm

To improve the detection ability of infrared small targets in complex backgrounds, a novel method based on non-convex rank approximation minimization joint <i>l</i><sub>2,1</sub> norm (NRAM) was proposed. Due to the defects of the nuclear norm and <i>l</i><sub&...

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Main Authors: Landan Zhang, Lingbing Peng, Tianfang Zhang, Siying Cao, Zhenming Peng
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/10/11/1821
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spelling doaj-8efd41bdac4e409ea8960916482ad1352020-11-25T00:50:42ZengMDPI AGRemote Sensing2072-42922018-11-011011182110.3390/rs10111821rs10111821Infrared Small Target Detection via Non-Convex Rank Approximation Minimization Joint <i>l</i><sub>2,1</sub> NormLandan Zhang0Lingbing Peng1Tianfang Zhang2Siying Cao3Zhenming Peng4School of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu 610054, ChinaSchool of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu 610054, ChinaSchool of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu 610054, ChinaSchool of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu 610054, ChinaSchool of Information and Communication Engineering, University of Electronic Science and Technology of China, Chengdu 610054, ChinaTo improve the detection ability of infrared small targets in complex backgrounds, a novel method based on non-convex rank approximation minimization joint <i>l</i><sub>2,1</sub> norm (NRAM) was proposed. Due to the defects of the nuclear norm and <i>l</i><sub>1</sub> norm, the state-of-the-art infrared image-patch (IPI) model usually leaves background residuals in the target image. To fix this problem, a non-convex, tighter rank surrogate and weighted <i>l</i><sub>1</sub> norm are instead utilized, which can suppress the background better while preserving the target efficiently. Considering that many state-of-the-art methods are still unable to fully suppress sparse strong edges, the structured <i>l</i><sub>2,1</sub> norm was introduced to wipe out the strong residuals. Furthermore, with the help of exploiting the structured norm and tighter rank surrogate, the proposed model was more robust when facing various complex or blurry scenes. To solve this non-convex model, an efficient optimization algorithm based on alternating direction method of multipliers (ADMM) plus difference of convex (DC) programming was designed. Extensive experimental results illustrate that the proposed method not only shows superiority in background suppression and target enhancement, but also reduces the computational complexity compared with other baselines.https://www.mdpi.com/2072-4292/10/11/1821infrared imagesmall target detectionnon-convex rank approximation minimizationstructured norm
collection DOAJ
language English
format Article
sources DOAJ
author Landan Zhang
Lingbing Peng
Tianfang Zhang
Siying Cao
Zhenming Peng
spellingShingle Landan Zhang
Lingbing Peng
Tianfang Zhang
Siying Cao
Zhenming Peng
Infrared Small Target Detection via Non-Convex Rank Approximation Minimization Joint <i>l</i><sub>2,1</sub> Norm
Remote Sensing
infrared image
small target detection
non-convex rank approximation minimization
structured norm
author_facet Landan Zhang
Lingbing Peng
Tianfang Zhang
Siying Cao
Zhenming Peng
author_sort Landan Zhang
title Infrared Small Target Detection via Non-Convex Rank Approximation Minimization Joint <i>l</i><sub>2,1</sub> Norm
title_short Infrared Small Target Detection via Non-Convex Rank Approximation Minimization Joint <i>l</i><sub>2,1</sub> Norm
title_full Infrared Small Target Detection via Non-Convex Rank Approximation Minimization Joint <i>l</i><sub>2,1</sub> Norm
title_fullStr Infrared Small Target Detection via Non-Convex Rank Approximation Minimization Joint <i>l</i><sub>2,1</sub> Norm
title_full_unstemmed Infrared Small Target Detection via Non-Convex Rank Approximation Minimization Joint <i>l</i><sub>2,1</sub> Norm
title_sort infrared small target detection via non-convex rank approximation minimization joint <i>l</i><sub>2,1</sub> norm
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2018-11-01
description To improve the detection ability of infrared small targets in complex backgrounds, a novel method based on non-convex rank approximation minimization joint <i>l</i><sub>2,1</sub> norm (NRAM) was proposed. Due to the defects of the nuclear norm and <i>l</i><sub>1</sub> norm, the state-of-the-art infrared image-patch (IPI) model usually leaves background residuals in the target image. To fix this problem, a non-convex, tighter rank surrogate and weighted <i>l</i><sub>1</sub> norm are instead utilized, which can suppress the background better while preserving the target efficiently. Considering that many state-of-the-art methods are still unable to fully suppress sparse strong edges, the structured <i>l</i><sub>2,1</sub> norm was introduced to wipe out the strong residuals. Furthermore, with the help of exploiting the structured norm and tighter rank surrogate, the proposed model was more robust when facing various complex or blurry scenes. To solve this non-convex model, an efficient optimization algorithm based on alternating direction method of multipliers (ADMM) plus difference of convex (DC) programming was designed. Extensive experimental results illustrate that the proposed method not only shows superiority in background suppression and target enhancement, but also reduces the computational complexity compared with other baselines.
topic infrared image
small target detection
non-convex rank approximation minimization
structured norm
url https://www.mdpi.com/2072-4292/10/11/1821
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AT tianfangzhang infraredsmalltargetdetectionvianonconvexrankapproximationminimizationjointilisub21subnorm
AT siyingcao infraredsmalltargetdetectionvianonconvexrankapproximationminimizationjointilisub21subnorm
AT zhenmingpeng infraredsmalltargetdetectionvianonconvexrankapproximationminimizationjointilisub21subnorm
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