ul 2004
+ TSO,
Bartin
-Cevre
lantısı,
nlarimin
3tkileri.
45-355.
ng and
IS, Ínc.,
002). A
r Land
XXIII
izanimi
Si) IL
Mayis
nlemler
project
rmany)
project
1guldak
EVALUATION OF AVHRR NDVI FOR MONITORING INTRA-ANNUAL AND
INTERANNUAL VEGETATION DYNAMICS IN A CLOUDY ENVIRONMENT
(SCOTLAND, UK)
S. Brand *. T.J. Malthus"
“ Institute of Photogrammetry and Remote Sensing, University of Karlsruhe, Englerstr. 7, 76128 Karlsruhe, Germany,
brand @ipf.uni-karlsruhe.de
? School of GeoSciences, University of Edinburgh, Drummond St, Edinburgh EH8 9XP, UK, ijm? geo.ed.ac.uk
KEY WORDS: Land Cover, Vegetation, Change Detection. Monitoring, Multitemporal, Interpretation
ABSTRACT:
Vegetation change detection has become increasingly important in understanding vegetation dynamics and its role in terrestrial and
aunospheric systems. In the case of Scotland, there is a need to routinely monitor habitats which include native pine woodland,
montane habitats, upland heathland and blanket bog (EC Habitats Directive). In northern temperate regions restricted and distinct
growing seasons impart significant phenological changes in vegetation which are detectable in remotely sensed data. However, the
high frequency of cloud cover in northern temperate climates presents a complicating factor in the use of remote sensing data for
monitoring vegetation. High cloud probability means loss of data which makes it more difficult to compile and interpret time-series
of data than would be the case in less cloudy areas. For this study satellite data of coarse spatial resolution and high temporal
frequency from the NOAA/AVHRR sensor have been evaluated for their utility in monitoring interannual and intra-annual
vegetation dynamics of semi-natural and agricultural vegetation types in Scotland. Weekly composited NDVI images for 1995 to
1998 were used in conjunction with digital maps of vegetation distribution to extract NDVI time-series. Temporal development
curves of the NDVI values for various vegetation cover types were visually compared to observe the phenology and to detect
changes in NDVI response between years. The weekly time-series approach proved to be useful for understanding seasonal dynamics
and allowed for interannual comparisons despite the high cloud-cover rate. However, it has also become evident that pre-processing
and accurate calibration of the AVHRR imagery is extremely important.
1. INTRODUCTION
Since the 1970s it has been possible to receive radiometric data
from meteorological and Earth resources satellites that allow us
to analyse the interactions between the solar radiation spectrum
and ocean, atmosphere and land properties. In particular. the
high temporal resolution sensor Advanced Very High
Resolution Radiometer (AVHRR) of the meteorological
satellite series TIROS-NOAA (National Oceanic and
Atmospheric Administration) has been used to gain knowledge
of the temporal, spatial and reflective behaviour of vegetation.
The daily coverage that this series of satellites and sensors has
provided offers a unique and long-term dataset with which to
investigate the magnitude of changes in vegetation at
continental and global scales (Lambin, Ehrlich 1997:
Malingreau, 1986).
Vegetation change detection has become increasingly important
because of the current interest in the establishment of human
impacts upon the environment. Long-term monitoring
programmes have been developed to examine and monitor these
changes. Conservation bodies like Scottish Natural Heritage
(SNH) are required by national and European legislation to
routinely monitor important and protected habitats. In the case
of Scotland, these habitats include native pine woodland,
montane habitats, upland heathland and blanket bog, each
recognised by the EC Habitats Directive (ECNC,. 1992.
MLURI, 1998). Information on the phenology and dynamics of
7
vegetation types and the magnitude and speed of their possible
changes needs to be provided to these conservation agencies.
Remote sensing could play an important role in identifying
areas of change at large scales. However, in north temperate
climates restricted and distinct growing impart
significant phenological change in vegetation, the magnitude
and pattern of which needs to be understood in order that the
more important longer-term interannual changes can be
properly identified and understood.
seasons
This study is based on weekly NDVI data of the AVHRR sensor
over Scotland from 1995 to 1998. It aims to investigate and
assess the use of this imagery for monitoring the phenology of
semi-natural vegetation in an environment with a high cloud
cover rate. Most studies, especially early on, have focussed on
monitoring and mapping of African, South-American or Asian
vegetation communities, mostly using monthly composited
NDVI data or single images (Malingreau, 1986; Lambin,
Ehrlich, 1997). Several studies analysed time-series satellite
data in order to develop intra-annual (DeFries et al., 1995) and
inter-annual (Reed ct al. 1994) profiles of the condition of
vegetation. Few studies have dealt with regional monitoring of
vegetation dynamics in a northern temperate climate using
short-term time-series of AVHRR NDVI data. The monitoring
of vegetation with a continuous time-series of weekly NDVI in
such a climatic environment will be made difficult by the
frequent presence of clouds and haze. To minimise this
problem. the composited period can be augmented. e.g. monthly