Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index

In this study, a comparative analysis of capabilities of three sensors for mapping forest crown closure (CC) and leaf area index (LAI) was conducted. The three sensors are Hyperspectral Imager (Hyperion) and Advanced Land Imager (ALI) onboard EO-1 satellite and Landsat-7 Enhanced Thematic Mapper Plu...

Full description

Bibliographic Details
Main Authors: Qian Yu, Peng Gong, Ruiliang Pu
Format: Article
Language:English
Published: MDPI AG 2008-06-01
Series:Sensors
Subjects:
ALI
Online Access:http://www.mdpi.com/1424-8220/8/6/3744/
id doaj-5c3037f427644106b211ca86c74d12ce
record_format Article
spelling doaj-5c3037f427644106b211ca86c74d12ce2020-11-25T00:21:15ZengMDPI AGSensors1424-82202008-06-018637443766Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area IndexQian YuPeng GongRuiliang PuIn this study, a comparative analysis of capabilities of three sensors for mapping forest crown closure (CC) and leaf area index (LAI) was conducted. The three sensors are Hyperspectral Imager (Hyperion) and Advanced Land Imager (ALI) onboard EO-1 satellite and Landsat-7 Enhanced Thematic Mapper Plus (ETM+). A total of 38 mixed coniferous forest CC and 38 LAI measurements were collected at Blodgett Forest Research Station, University of California at Berkeley, USA. The analysis method consists of (1) extracting spectral vegetation indices (VIs), spectral texture information and maximum noise fractions (MNFs), (2) establishing multivariate prediction models, (3) predicting and mapping pixel-based CC and LAI values, and (4) validating the mapped CC and LAI results with field validated photo-interpreted CC and LAI values. The experimental results indicate that the Hyperion data are the most effective for mapping forest CC and LAI (CC mapped accuracy (MA) = 76.0%, LAI MA = 74.7%), followed by ALI data (CC MA = 74.5%, LAI MA = 70.7%), with ETM+ data results being least effective (CC MA = 71.1%, LAI MA = 63.4%). This analysis demonstrates that the Hyperion sensor outperforms the other two sensors: ALI and ETM+. This is because of its high spectral resolution with rich subtle spectral information, of its short-wave infrared data for constructing optimal VIs that are slightly affected by the atmosphere, and of its more available MNFs than the other two sensors to be selected for establishing prediction models. Compared to ETM+ data, ALI data are better for mapping forest CC and LAI due to ALI data with more bands and higher signal-to-noise ratios than those of ETM+ data.http://www.mdpi.com/1424-8220/8/6/3744/HyperionALIETM+Leaf area indexCrown closureVegetation indexTexture informationMaximum noise fraction
collection DOAJ
language English
format Article
sources DOAJ
author Qian Yu
Peng Gong
Ruiliang Pu
spellingShingle Qian Yu
Peng Gong
Ruiliang Pu
Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index
Sensors
Hyperion
ALI
ETM+
Leaf area index
Crown closure
Vegetation index
Texture information
Maximum noise fraction
author_facet Qian Yu
Peng Gong
Ruiliang Pu
author_sort Qian Yu
title Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index
title_short Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index
title_full Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index
title_fullStr Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index
title_full_unstemmed Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index
title_sort comparative analysis of eo-1 ali and hyperion, and landsat etm+ data for mapping forest crown closure and leaf area index
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2008-06-01
description In this study, a comparative analysis of capabilities of three sensors for mapping forest crown closure (CC) and leaf area index (LAI) was conducted. The three sensors are Hyperspectral Imager (Hyperion) and Advanced Land Imager (ALI) onboard EO-1 satellite and Landsat-7 Enhanced Thematic Mapper Plus (ETM+). A total of 38 mixed coniferous forest CC and 38 LAI measurements were collected at Blodgett Forest Research Station, University of California at Berkeley, USA. The analysis method consists of (1) extracting spectral vegetation indices (VIs), spectral texture information and maximum noise fractions (MNFs), (2) establishing multivariate prediction models, (3) predicting and mapping pixel-based CC and LAI values, and (4) validating the mapped CC and LAI results with field validated photo-interpreted CC and LAI values. The experimental results indicate that the Hyperion data are the most effective for mapping forest CC and LAI (CC mapped accuracy (MA) = 76.0%, LAI MA = 74.7%), followed by ALI data (CC MA = 74.5%, LAI MA = 70.7%), with ETM+ data results being least effective (CC MA = 71.1%, LAI MA = 63.4%). This analysis demonstrates that the Hyperion sensor outperforms the other two sensors: ALI and ETM+. This is because of its high spectral resolution with rich subtle spectral information, of its short-wave infrared data for constructing optimal VIs that are slightly affected by the atmosphere, and of its more available MNFs than the other two sensors to be selected for establishing prediction models. Compared to ETM+ data, ALI data are better for mapping forest CC and LAI due to ALI data with more bands and higher signal-to-noise ratios than those of ETM+ data.
topic Hyperion
ALI
ETM+
Leaf area index
Crown closure
Vegetation index
Texture information
Maximum noise fraction
url http://www.mdpi.com/1424-8220/8/6/3744/
work_keys_str_mv AT qianyu comparativeanalysisofeo1aliandhyperionandlandsatetmdataformappingforestcrownclosureandleafareaindex
AT penggong comparativeanalysisofeo1aliandhyperionandlandsatetmdataformappingforestcrownclosureandleafareaindex
AT ruiliangpu comparativeanalysisofeo1aliandhyperionandlandsatetmdataformappingforestcrownclosureandleafareaindex
_version_ 1725363053614071808