Cargando…

A Long Time-Series Radiometric Normalization Method for Landsat Images

Radiometric normalization attempts to normalize the radiomimetic distortion caused by non-land surface-related factors, for example, different atmospheric conditions at image acquisition time and sensor factors, and to improve the radiometric consistency between remote sensing images. Using a remote...

Descripción completa

Detalles Bibliográficos
Autores principales: Wu, Wei, Sun, Xia, Wang, Xianwei, Fan, Jing, Luo, Jiancheng, Shen, Ying, Yang, Yingpin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6308655/
https://www.ncbi.nlm.nih.gov/pubmed/30572678
http://dx.doi.org/10.3390/s18124505
_version_ 1783383240065679360
author Wu, Wei
Sun, Xia
Wang, Xianwei
Fan, Jing
Luo, Jiancheng
Shen, Ying
Yang, Yingpin
author_facet Wu, Wei
Sun, Xia
Wang, Xianwei
Fan, Jing
Luo, Jiancheng
Shen, Ying
Yang, Yingpin
author_sort Wu, Wei
collection PubMed
description Radiometric normalization attempts to normalize the radiomimetic distortion caused by non-land surface-related factors, for example, different atmospheric conditions at image acquisition time and sensor factors, and to improve the radiometric consistency between remote sensing images. Using a remote sensing image and a reference image as a pair is a traditional method of performing radiometric normalization. However, when applied to the radiometric normalization of long time-series of images, this method has two deficiencies: first, different pseudo-invariant features (PIFs)—radiometric characteristics of which do not change with time—are extracted in different pairs of images; and second, when processing an image based on a reference, we can minimize the residual between them, but the residual between temporally adjacent images may induce steep increases and decreases, which may conceal the information contained in the time-series indicators, such as vegetative index. To overcome these two problems, we propose an optimization strategy for radiometric normalization of long time-series of remote sensing images. First, the time-series gray-scale values for a pixel in the near-infrared band are sorted in ascending order and segmented into different parts. Second, the outliers and inliers of the time-series observation are determined using a modified Inflexion Based Cloud Detection (IBCD) method. Third, the variation amplitudes of the PIFs are smaller than for vegetation but larger than for water, and accordingly the PIFs are identified. Last, a novel optimization strategy aimed at minimizing the correction residual between the image to be processed and the images processed previously is adopted to determine the radiometric normalization sequence. Time-series images from the Thematic Mapper onboard Landsat 5 for Hangzhou City are selected for the experiments, and the results suggest that our method can effectively eliminate the radiometric distortion and preserve the variation of vegetation in the time-series of images. Smoother time-series profiles of gray-scale values and uniform root mean square error distributions can be obtained compared with those of the traditional method, which indicates that our method can obtain better radiometric consistency and normalization performance.
format Online
Article
Text
id pubmed-6308655
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-63086552019-01-04 A Long Time-Series Radiometric Normalization Method for Landsat Images Wu, Wei Sun, Xia Wang, Xianwei Fan, Jing Luo, Jiancheng Shen, Ying Yang, Yingpin Sensors (Basel) Article Radiometric normalization attempts to normalize the radiomimetic distortion caused by non-land surface-related factors, for example, different atmospheric conditions at image acquisition time and sensor factors, and to improve the radiometric consistency between remote sensing images. Using a remote sensing image and a reference image as a pair is a traditional method of performing radiometric normalization. However, when applied to the radiometric normalization of long time-series of images, this method has two deficiencies: first, different pseudo-invariant features (PIFs)—radiometric characteristics of which do not change with time—are extracted in different pairs of images; and second, when processing an image based on a reference, we can minimize the residual between them, but the residual between temporally adjacent images may induce steep increases and decreases, which may conceal the information contained in the time-series indicators, such as vegetative index. To overcome these two problems, we propose an optimization strategy for radiometric normalization of long time-series of remote sensing images. First, the time-series gray-scale values for a pixel in the near-infrared band are sorted in ascending order and segmented into different parts. Second, the outliers and inliers of the time-series observation are determined using a modified Inflexion Based Cloud Detection (IBCD) method. Third, the variation amplitudes of the PIFs are smaller than for vegetation but larger than for water, and accordingly the PIFs are identified. Last, a novel optimization strategy aimed at minimizing the correction residual between the image to be processed and the images processed previously is adopted to determine the radiometric normalization sequence. Time-series images from the Thematic Mapper onboard Landsat 5 for Hangzhou City are selected for the experiments, and the results suggest that our method can effectively eliminate the radiometric distortion and preserve the variation of vegetation in the time-series of images. Smoother time-series profiles of gray-scale values and uniform root mean square error distributions can be obtained compared with those of the traditional method, which indicates that our method can obtain better radiometric consistency and normalization performance. MDPI 2018-12-19 /pmc/articles/PMC6308655/ /pubmed/30572678 http://dx.doi.org/10.3390/s18124505 Text en © 2018 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Wu, Wei
Sun, Xia
Wang, Xianwei
Fan, Jing
Luo, Jiancheng
Shen, Ying
Yang, Yingpin
A Long Time-Series Radiometric Normalization Method for Landsat Images
title A Long Time-Series Radiometric Normalization Method for Landsat Images
title_full A Long Time-Series Radiometric Normalization Method for Landsat Images
title_fullStr A Long Time-Series Radiometric Normalization Method for Landsat Images
title_full_unstemmed A Long Time-Series Radiometric Normalization Method for Landsat Images
title_short A Long Time-Series Radiometric Normalization Method for Landsat Images
title_sort long time-series radiometric normalization method for landsat images
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6308655/
https://www.ncbi.nlm.nih.gov/pubmed/30572678
http://dx.doi.org/10.3390/s18124505
work_keys_str_mv AT wuwei alongtimeseriesradiometricnormalizationmethodforlandsatimages
AT sunxia alongtimeseriesradiometricnormalizationmethodforlandsatimages
AT wangxianwei alongtimeseriesradiometricnormalizationmethodforlandsatimages
AT fanjing alongtimeseriesradiometricnormalizationmethodforlandsatimages
AT luojiancheng alongtimeseriesradiometricnormalizationmethodforlandsatimages
AT shenying alongtimeseriesradiometricnormalizationmethodforlandsatimages
AT yangyingpin alongtimeseriesradiometricnormalizationmethodforlandsatimages
AT wuwei longtimeseriesradiometricnormalizationmethodforlandsatimages
AT sunxia longtimeseriesradiometricnormalizationmethodforlandsatimages
AT wangxianwei longtimeseriesradiometricnormalizationmethodforlandsatimages
AT fanjing longtimeseriesradiometricnormalizationmethodforlandsatimages
AT luojiancheng longtimeseriesradiometricnormalizationmethodforlandsatimages
AT shenying longtimeseriesradiometricnormalizationmethodforlandsatimages
AT yangyingpin longtimeseriesradiometricnormalizationmethodforlandsatimages