Fractal Feature Analysis and Information Extraction of Woodlands Based on MODIS NDVI Time Series

The quick and accurate extraction of information on woodland resources and distributions using remote sensing technology is a key step in the management, protection, and sustainable use of woodlands. This paper presents a low-cost and high-precision extraction method for large woodland areas based o...

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Main Authors: Shiwei Dong, Hong Li, Danfeng Sun
Format: Article
Language:English
Published: MDPI AG 2017-07-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/9/7/1215
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spelling doaj-f34ed208a356410592f659485da7c0422020-11-24T22:20:12ZengMDPI AGSustainability2071-10502017-07-0197121510.3390/su9071215su9071215Fractal Feature Analysis and Information Extraction of Woodlands Based on MODIS NDVI Time SeriesShiwei Dong0Hong Li1Danfeng Sun2College of Resources and Environmental Sciences, China Agricultural University, Beijing 100193, ChinaBeijing Academy of Agriculture and Forestry Sciences, Beijing 100097, ChinaCollege of Resources and Environmental Sciences, China Agricultural University, Beijing 100193, ChinaThe quick and accurate extraction of information on woodland resources and distributions using remote sensing technology is a key step in the management, protection, and sustainable use of woodlands. This paper presents a low-cost and high-precision extraction method for large woodland areas based on the fractal features of the Moderate Resolution Imaging Spectroradiometer (MODIS) normalized difference vegetation index (NDVI) time series data for Beijing, China. The blanket method was used for computing the upper and lower fractal signals of each pixel in the NDVI time series images. The fractal signals of woodlands and other land use/land cover types at corresponding scales were analyzed and compared, and the attributes of woodlands were enhanced at the fifth lower fractal signal. The spatial distributions of woodlands were extracted using the Iterative Self-Organizing Data Analysis technique (ISODATA), and an accuracy assessment of the extracted results was conducted using the China Land Use and Land Cover Data Set (CLUCDS) from the same period. The results showed that the overall accuracy, kappa coefficient, and error coefficient were 90.54%, 0.74, and 8.17%, respectively. Compared with the extracted results for woodlands using the MODIS NDVI time series only, the average error coefficient decreased from 30.2 to 7.38% because of these fractal features. The method developed in this study can rapidly and effectively extract information on woodlands from low spatial resolution remote sensing data and provide a robust operational tool for use in further research.https://www.mdpi.com/2071-1050/9/7/1215fractal featuresinformation extractionaccuracy assessmentMODIS NDVIwoodland
collection DOAJ
language English
format Article
sources DOAJ
author Shiwei Dong
Hong Li
Danfeng Sun
spellingShingle Shiwei Dong
Hong Li
Danfeng Sun
Fractal Feature Analysis and Information Extraction of Woodlands Based on MODIS NDVI Time Series
Sustainability
fractal features
information extraction
accuracy assessment
MODIS NDVI
woodland
author_facet Shiwei Dong
Hong Li
Danfeng Sun
author_sort Shiwei Dong
title Fractal Feature Analysis and Information Extraction of Woodlands Based on MODIS NDVI Time Series
title_short Fractal Feature Analysis and Information Extraction of Woodlands Based on MODIS NDVI Time Series
title_full Fractal Feature Analysis and Information Extraction of Woodlands Based on MODIS NDVI Time Series
title_fullStr Fractal Feature Analysis and Information Extraction of Woodlands Based on MODIS NDVI Time Series
title_full_unstemmed Fractal Feature Analysis and Information Extraction of Woodlands Based on MODIS NDVI Time Series
title_sort fractal feature analysis and information extraction of woodlands based on modis ndvi time series
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2017-07-01
description The quick and accurate extraction of information on woodland resources and distributions using remote sensing technology is a key step in the management, protection, and sustainable use of woodlands. This paper presents a low-cost and high-precision extraction method for large woodland areas based on the fractal features of the Moderate Resolution Imaging Spectroradiometer (MODIS) normalized difference vegetation index (NDVI) time series data for Beijing, China. The blanket method was used for computing the upper and lower fractal signals of each pixel in the NDVI time series images. The fractal signals of woodlands and other land use/land cover types at corresponding scales were analyzed and compared, and the attributes of woodlands were enhanced at the fifth lower fractal signal. The spatial distributions of woodlands were extracted using the Iterative Self-Organizing Data Analysis technique (ISODATA), and an accuracy assessment of the extracted results was conducted using the China Land Use and Land Cover Data Set (CLUCDS) from the same period. The results showed that the overall accuracy, kappa coefficient, and error coefficient were 90.54%, 0.74, and 8.17%, respectively. Compared with the extracted results for woodlands using the MODIS NDVI time series only, the average error coefficient decreased from 30.2 to 7.38% because of these fractal features. The method developed in this study can rapidly and effectively extract information on woodlands from low spatial resolution remote sensing data and provide a robust operational tool for use in further research.
topic fractal features
information extraction
accuracy assessment
MODIS NDVI
woodland
url https://www.mdpi.com/2071-1050/9/7/1215
work_keys_str_mv AT shiweidong fractalfeatureanalysisandinformationextractionofwoodlandsbasedonmodisndvitimeseries
AT hongli fractalfeatureanalysisandinformationextractionofwoodlandsbasedonmodisndvitimeseries
AT danfengsun fractalfeatureanalysisandinformationextractionofwoodlandsbasedonmodisndvitimeseries
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