International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
LARGE AREA LAND COVER CLASSIFICATION WITH LANDSAT
ETM+ IMAGES BASED ON DECISION TREE
Liang ZHAI, Jinping SUN, Huiyong SANG, Gang YANG, Yi JIA
Key Laboratory of Geo-Informatics of NASG, Chinese Academy of Surveying and Mapping, Beijing, China
zhailiang@casm.ac.cn
Commission VII, WG VII/6: Remote Sensing Data Fusion
KEY WORDS: land cover classification, decision tree, C5.0, MLC
ABSTRACT:
Traditional land classification techniques for large areas that use LANDSAT TM imagery are typically limited to
the fixed spatial resolution of the sensors. For modeling habitat characteristics is often difficult when a study area
is large and diverse and complete sampling of environmental variables is unrealistic. We also did some researches
on this field, in this paper we firstly introduced the decision tree classification based on C5.0, and then introduced
the classification workflow. The study results were compared with the Maximum Likelihood Classification result.
Victoria of Australia was as the study area, the LANDSAT ETM+ images were used to classify. Experiments show
that the decision tree classification method based on C5.0 is better.
1. INTRODUCTION
Detailed and accurate land cover data are widely
used by various organizations, such as national,
regional, local governments and private industries, as
well as educational and research organizations because
they are the basis for many environmental and
socioeconomic applications (Perera and Tsuchiya,
2009; Heinl et al., 2009). The suitability of remote
sensing for acquiring land cover data has long been
recognised and land cover mapping with using satellite
data has received growing attention in the last 20 years.,
but the process of generating land cover information
from satellite data is still far from being standardised or
optimised (Foody, 2002; Lu and Weng, 2007; Heinl et
al., 2009).
Currently, particularly in times of global change,
global land cover mapping has drawn much attention to
many countries or organization. Till now, there are a
number of global land cover products exist, such as
IGBP DISCover, the MODIS land cover product,
UMD land cover product, Global Land Cover 2000
(GLC2000, Bartholomé & Belward, 2005) and
GLOBCOVER (Loveland et al., 2000; Friedl et al.,
2002; Hansen et al., 2000; Herold et al 2008). These
maps have been developed in response to the need for
information about land cover and land cover dynamics.
They all have been produced from optical, moderate
resolution remote sensing and thematically focused on
characterizing the different vegetation types worldwide
(Herold et al 2008).Large area land cover
classification still has many difficulties.
There are three key problems of classification: 1)
given a set of example records, 2) build an accurate
model for each class based on the set of attributes, 3)
use the model to classify future data for which the
class labels are unknown. Common classification
models are: neural networks, statistical models,
Decision tree and genetic models. Decision tree has
many great advantages in the remote sensing
classification, which has been successfully used in
many situations. Liu Zhongyang adopted the decision
tree classification method based on LANDSAT TM
image to present coverage situation of Zhengzhou city
and proved that the decision tree classification method
has obvious advantages, such as exact classification,
efficient, definite classification criterion, intuitive
classification structure controllable classification
precision automated classification, etc (Liu
Zhongyang, 2010). There are also many researches on
C5.0, for example, this algorithm used in NLCD 2000
to do land cover classification (Homer, Collin, 2000),
to estimate tree canopy density (Chengquan Huang,
2000), and so on, these applications all got good
results.
This paper introduced the C5.0 algorithm, and
provided a C5.0 land cover classification platform,
this platform also been used to classify the images of
Victoria. Further, the classification result was been
compared with MLC classification result, it proved
that the C5.0 classification method is excellent.
1.1 Study Area and Data
We chose Victoria of Australia as our study Area.
Victoria located in southeast of Australia, its location
in Australia is as shown in figure i. Victoria is the
smallest mainland state, and Australia’s second city of
--- Melbourne is located in this state. Victoria's
climate contains Mediterranean climate, temperate
maritime climate, and some Savannah climate. The
ecoregions that covered Victoria are Murray-Darling
woodlands and mallee, Southeast Australia temperate
savanna and Southeast Australia temperate forests.
Various climate and terrain lead to rich land cover
types in Victoria.