Cargando…

An Adaptive Infrared Small-Target-Detection Fusion Algorithm Based on Multiscale Local Gradient Contrast for Remote Sensing

Space vehicles such as missiles and aircraft have relatively long tracking distances. Infrared (IR) detectors are used for small target detection. The target presents point target characteristics, which lack contour, shape, and texture information. The high-brightness cloud edge and high noise have...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Juan, Qiu, Lin, Zhu, Zhencai, Sun, Ning, Huang, Hao, Ip, Wai-Hung, Yung, Kai-Leung
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10456515/
https://www.ncbi.nlm.nih.gov/pubmed/37630088
http://dx.doi.org/10.3390/mi14081552
_version_ 1785096718045413376
author Chen, Juan
Qiu, Lin
Zhu, Zhencai
Sun, Ning
Huang, Hao
Ip, Wai-Hung
Yung, Kai-Leung
author_facet Chen, Juan
Qiu, Lin
Zhu, Zhencai
Sun, Ning
Huang, Hao
Ip, Wai-Hung
Yung, Kai-Leung
author_sort Chen, Juan
collection PubMed
description Space vehicles such as missiles and aircraft have relatively long tracking distances. Infrared (IR) detectors are used for small target detection. The target presents point target characteristics, which lack contour, shape, and texture information. The high-brightness cloud edge and high noise have an impact on the detection of small targets because of the complex background of the sky and ground environment. Traditional template-based filtering and local contrast-based methods do not distinguish between different complex background environments, and their strategy is to unify small-target template detection or to use absolute contrast differences; so, it is easy to have a high false alarm rate. It is necessary to study the detection and tracking methods in complex backgrounds and low signal-to-clutter ratios (SCRs). We use the complexity difference as a prior condition for detection in the background of thick clouds and ground highlight buildings. Then, we use the spatial domain filtering and improved local contrast joint algorithm to obtain a significant area. We also provide a new definition of gradient uniformity through the improvement of the local gradient method, which could further enhance the target contrast. It is important to distinguish between small targets, highlighted background edges, and noise. Furthermore, the method can be used for parallel computing. Compared with the traditional space filtering algorithm or local contrast algorithm, the flexible fusion strategy can achieve the rapid detection of small targets with a higher signal-to-clutter ratio gain (SCRG) and background suppression factor (BSF).
format Online
Article
Text
id pubmed-10456515
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-104565152023-08-26 An Adaptive Infrared Small-Target-Detection Fusion Algorithm Based on Multiscale Local Gradient Contrast for Remote Sensing Chen, Juan Qiu, Lin Zhu, Zhencai Sun, Ning Huang, Hao Ip, Wai-Hung Yung, Kai-Leung Micromachines (Basel) Article Space vehicles such as missiles and aircraft have relatively long tracking distances. Infrared (IR) detectors are used for small target detection. The target presents point target characteristics, which lack contour, shape, and texture information. The high-brightness cloud edge and high noise have an impact on the detection of small targets because of the complex background of the sky and ground environment. Traditional template-based filtering and local contrast-based methods do not distinguish between different complex background environments, and their strategy is to unify small-target template detection or to use absolute contrast differences; so, it is easy to have a high false alarm rate. It is necessary to study the detection and tracking methods in complex backgrounds and low signal-to-clutter ratios (SCRs). We use the complexity difference as a prior condition for detection in the background of thick clouds and ground highlight buildings. Then, we use the spatial domain filtering and improved local contrast joint algorithm to obtain a significant area. We also provide a new definition of gradient uniformity through the improvement of the local gradient method, which could further enhance the target contrast. It is important to distinguish between small targets, highlighted background edges, and noise. Furthermore, the method can be used for parallel computing. Compared with the traditional space filtering algorithm or local contrast algorithm, the flexible fusion strategy can achieve the rapid detection of small targets with a higher signal-to-clutter ratio gain (SCRG) and background suppression factor (BSF). MDPI 2023-08-02 /pmc/articles/PMC10456515/ /pubmed/37630088 http://dx.doi.org/10.3390/mi14081552 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Chen, Juan
Qiu, Lin
Zhu, Zhencai
Sun, Ning
Huang, Hao
Ip, Wai-Hung
Yung, Kai-Leung
An Adaptive Infrared Small-Target-Detection Fusion Algorithm Based on Multiscale Local Gradient Contrast for Remote Sensing
title An Adaptive Infrared Small-Target-Detection Fusion Algorithm Based on Multiscale Local Gradient Contrast for Remote Sensing
title_full An Adaptive Infrared Small-Target-Detection Fusion Algorithm Based on Multiscale Local Gradient Contrast for Remote Sensing
title_fullStr An Adaptive Infrared Small-Target-Detection Fusion Algorithm Based on Multiscale Local Gradient Contrast for Remote Sensing
title_full_unstemmed An Adaptive Infrared Small-Target-Detection Fusion Algorithm Based on Multiscale Local Gradient Contrast for Remote Sensing
title_short An Adaptive Infrared Small-Target-Detection Fusion Algorithm Based on Multiscale Local Gradient Contrast for Remote Sensing
title_sort adaptive infrared small-target-detection fusion algorithm based on multiscale local gradient contrast for remote sensing
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10456515/
https://www.ncbi.nlm.nih.gov/pubmed/37630088
http://dx.doi.org/10.3390/mi14081552
work_keys_str_mv AT chenjuan anadaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT qiulin anadaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT zhuzhencai anadaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT sunning anadaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT huanghao anadaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT ipwaihung anadaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT yungkaileung anadaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT chenjuan adaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT qiulin adaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT zhuzhencai adaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT sunning adaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT huanghao adaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT ipwaihung adaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing
AT yungkaileung adaptiveinfraredsmalltargetdetectionfusionalgorithmbasedonmultiscalelocalgradientcontrastforremotesensing