Exploring the Use of MODIS NDVI-Based Phenology Indicators for Classifying Forest General Habitat Categories

The cost effective monitoring of habitats and their biodiversity remains a challenge to date. Earth Observation (EO) has a key role to play in mapping habitat and biodiversity in general, providing tools for the systematic collection of environmental data. The recent GEO-BON European Biodiversity Ob...

Full description

Bibliographic Details
Main Authors: France Gerard, Nicola Clerici, Christof J. Weissteiner
Format: Article
Language:English
Published: MDPI AG 2012-06-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/4/6/1781
id doaj-cdf741f1b9a544f4ae0da9dba3d5f6c7
record_format Article
spelling doaj-cdf741f1b9a544f4ae0da9dba3d5f6c72020-11-24T22:27:19ZengMDPI AGRemote Sensing2072-42922012-06-01461781180310.3390/rs4061781Exploring the Use of MODIS NDVI-Based Phenology Indicators for Classifying Forest General Habitat CategoriesFrance GerardNicola ClericiChristof J. WeissteinerThe cost effective monitoring of habitats and their biodiversity remains a challenge to date. Earth Observation (EO) has a key role to play in mapping habitat and biodiversity in general, providing tools for the systematic collection of environmental data. The recent GEO-BON European Biodiversity Observation Network project (EBONE) established a framework for an integrated biodiversity monitoring system. Underlying this framework is the idea of integrating <em>in situ</em> with EO and a habitat classification scheme based on General Habitat Categories (GHC), designed with an Earth Observation-perspective. Here we report on EBONE work that explored the use of NDVI-derived phenology metrics for the identification and mapping of Forest GHCs. Thirty-one phenology metrics were extracted from MODIS NDVI time series for Europe. Classifications to discriminate forest types were performed based on a Random Forests™ classifier in selected regions. Results indicate that date phenology metrics are generally more significant for forest type discrimination. The achieved class accuracies are generally not satisfactory, except for coniferous forests in homogeneous stands (77–82%). The main causes of low classification accuracies were identified as (i) the spatial resolution of the imagery (250 m) which led to mixed phenology signals; (ii) the GHC scheme classification design, which allows for parcels of heterogeneous covers, and (iii) the low number of the training samples available from field surveys. A mapping strategy integrating EO-based phenology with vegetation height information is expected to be more effective than a purely phenology-based approach.http://www.mdpi.com/2072-4292/4/6/1781phenologyNDVIRandom ForestsMODISforest vegetation
collection DOAJ
language English
format Article
sources DOAJ
author France Gerard
Nicola Clerici
Christof J. Weissteiner
spellingShingle France Gerard
Nicola Clerici
Christof J. Weissteiner
Exploring the Use of MODIS NDVI-Based Phenology Indicators for Classifying Forest General Habitat Categories
Remote Sensing
phenology
NDVI
Random Forests
MODIS
forest vegetation
author_facet France Gerard
Nicola Clerici
Christof J. Weissteiner
author_sort France Gerard
title Exploring the Use of MODIS NDVI-Based Phenology Indicators for Classifying Forest General Habitat Categories
title_short Exploring the Use of MODIS NDVI-Based Phenology Indicators for Classifying Forest General Habitat Categories
title_full Exploring the Use of MODIS NDVI-Based Phenology Indicators for Classifying Forest General Habitat Categories
title_fullStr Exploring the Use of MODIS NDVI-Based Phenology Indicators for Classifying Forest General Habitat Categories
title_full_unstemmed Exploring the Use of MODIS NDVI-Based Phenology Indicators for Classifying Forest General Habitat Categories
title_sort exploring the use of modis ndvi-based phenology indicators for classifying forest general habitat categories
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2012-06-01
description The cost effective monitoring of habitats and their biodiversity remains a challenge to date. Earth Observation (EO) has a key role to play in mapping habitat and biodiversity in general, providing tools for the systematic collection of environmental data. The recent GEO-BON European Biodiversity Observation Network project (EBONE) established a framework for an integrated biodiversity monitoring system. Underlying this framework is the idea of integrating <em>in situ</em> with EO and a habitat classification scheme based on General Habitat Categories (GHC), designed with an Earth Observation-perspective. Here we report on EBONE work that explored the use of NDVI-derived phenology metrics for the identification and mapping of Forest GHCs. Thirty-one phenology metrics were extracted from MODIS NDVI time series for Europe. Classifications to discriminate forest types were performed based on a Random Forests™ classifier in selected regions. Results indicate that date phenology metrics are generally more significant for forest type discrimination. The achieved class accuracies are generally not satisfactory, except for coniferous forests in homogeneous stands (77–82%). The main causes of low classification accuracies were identified as (i) the spatial resolution of the imagery (250 m) which led to mixed phenology signals; (ii) the GHC scheme classification design, which allows for parcels of heterogeneous covers, and (iii) the low number of the training samples available from field surveys. A mapping strategy integrating EO-based phenology with vegetation height information is expected to be more effective than a purely phenology-based approach.
topic phenology
NDVI
Random Forests
MODIS
forest vegetation
url http://www.mdpi.com/2072-4292/4/6/1781
work_keys_str_mv AT francegerard exploringtheuseofmodisndvibasedphenologyindicatorsforclassifyingforestgeneralhabitatcategories
AT nicolaclerici exploringtheuseofmodisndvibasedphenologyindicatorsforclassifyingforestgeneralhabitatcategories
AT christofjweissteiner exploringtheuseofmodisndvibasedphenologyindicatorsforclassifyingforestgeneralhabitatcategories
_version_ 1725750504030470144