In: Wagner W., Székely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
AN ASSESSMENT OF THE EFFICIENCY OF LANDSAT, NIGERIASAT-1 AND SPOT
IMAGES FOR LANDUSE/LANDCOVER ANALYSES IN EKITI WEST AREA OF
NIGERIA
Ojo A G a , Adesina F A b
a African Regional Centre for Space Science and Technology Education, PMB 019 OAU Campus, Ile-Ife.
oiobavous@vahoo.com
b Department of Geography Obafemi Awolowo University, Ile-Ife, Osun State, Nigeria
faadesin@oauife.edu.ng b
KEYWORDS: Land-use, Accuracy Assessment, Landsat TM, SPOT XS, NigeriaSat-1, Classification
ABSTRACT:
Several remote sensing data types are now available for environmental studies. The variety has increased as many nations
including some African countries invest in satellite remote sensing. However, each data type has its own peculiar features that may
limit or enhance its relevance to capture data for specific range of information. This study used geo-information techniques based on
multi-source imageries to enhance the utilization of images with coarser resolutions in landuse analysis in Ekiti west area of south
western Nigeria. The objective of the study is to evaluate the variations in landuse characterization with multi-source satellite data
sets. The remotely sensed data sets used included Landsat TM 1986, SPOT XS 1995 and NigeriaSat-1 2007 satellite images. To
make the images comparable, they were georeferenced, re-sampled and enhanced for visualization in a GIS environment. The tonal
values recorded in the images with the features on the ground were validated by ground truthing. The data from ground truthing
were combined with visual image interpretation for “supervised” classification. The classes defined and analyzed included “built-up
area”, “bare rock”, “farmland”, secondary forest regrowth” and “water body”. The results show that each image has certain
relative advantage over the other. For instance, while NigeriaSat-1 image was efficient in the analysis of information within the
visible portion of the electromagnetic spectrum, SPOT image was better in the Near Infrared. Information from Landsat image was
rather weak at both portions (Visible and NIR) of the Electromagnetic Spectrum. The study also shows that SPOT image has the
lowest level of data redundancy of the three image providers. The study confirms the relevance of the growing interest in the use of
geo-information techniques for landuse analysis.
1. INTRODUCTION
Remotely sensed imageries are one of the most important
sources of spatial data for environmental studies. They are data
obtained via remotely placed sensors which may be located at
heights sometime several hundred of kilometres in space to
make it possible for the sensor to “see” a large portion of the
earth’s surface at the same time. Such images can also be
obtained from low flying aircrafts equipped with suitable
cameras to track earth-based features. These data sets allow
earth-based phenomena such as landuse and landcover
characteristics to be rapidly mapped, if needed repetitively and
at relatively low costs. With increasing capacity to rapidly
generate maps of large areas, planners in the rural and urban
areas are getting more empowered to address issues associated
with landuse analysis such land misuse and various forms of
incursion into properties and trespassing.
Some of the most commonly used remote sensing data sets
for mapping landuse and landcover are those from Landsat,
SPOT (Système Probatoire d'Observation de la Terre), 1RS
(Indian Remote Sensing), ASTER (Advanced Spacebome
Thermal Emission and Reflection Radiometer), MODIS
(Moderate Resolution Imaging Spectrometer), JERS-1
(Japanese Earth Resources Satellite), and recently, NigeriaSat-
1 satellites. The Landsat data have greater spectral resolution
(Gastellu-Etchegorry, 1990) and a longer time series, while
SPOT provides better spatial resolution but with shorter
historical records. Newer satellite imaging systems a”
commonly equipped with enhanced instruments to generate
additional data that permit more accurate mapping and analysis.
Landuse/landcover analyses usually proceed from classification
of the area of study. The classified units can be further analysed
in terms of their characteristics particularly size.
Factors that may influence classification accuracy include
a sensor’s spatial, radiometry and spectral resolutions. Spatial
resolution describes the size each pixel represents in the real
world (Cushnie, 1987). For example, a satellite with 30 metre
resolution produces pixels that measure a 30x30 metre area on
the ground. Radiometric resolution, on the other hand, is the
smallest difference in brightness that a sensor can detect. A
sensor with high radiometric resolution would therefore have
very low “noise”. The “noise” is described as any unwanted or
contaminating signal competing with the desired signal.
Spectral resolution is the number of different wavelengths that a
sensor can detect. A sensor that produces a panchromatic image
alone has a very low spectral resolution, while one that can
distinguish many shades of each colour has a high spectral
resolution (Jensen, 2007).
Generally, spatial resolution is the most important factor of
the three for landuse and landcover definition. For example
Gastellu-Etchegorry (1990), in Indonesia studied landuse with
SPOT and Landsat images. He showed that SPOT Multispectral
(XS) images are better than Landsat Multispectral Scanner
(MSS) images for mapping of heterogeneous near-urban
landcover because of SPOT’s superior spatial resolution. The
link between spatial resolution and classification accuracy,