AUTOMATIC LAND-COVER CLASSIFICATION OF LANDSAT IMAGES
USING FEATURE DATABASE IN A NETWORK
G. W Yoon*. S. L Cho, G. J. Chae, J. H. Park
ETRI Telematics Research Group, Daejeon, Korea — (gwyoon, chosi, cbase, jhp)@etri.re.kr
KEY WORDS: Classification, Land cover, Database, Networks, Segmentation, Object, Software
ABSTRACT:
In order to utilize remote sensed images effectively, a lot of image classification methods are suggested for many years. But the
accuracy of traditional methods based on pixel-based classification is not high in general. And, in case of supervised classification,
users should select training data sets within the image that are representative of the land-cover classes of interest. But users feel
inconvenience to extract training data sets for image classification. In this paper, object oriented classification of Landsat images
using feature database is studied in consideration of user's convenience and classification accuracy. Object oriented image
classification, currently a new classification concept, allows the integration of a spectral value, shape and texture and creates image
objects. According to classification classes, objects statistics such as mean value, standard deviation, tasselled cap transformation
and band ratio component were constructed as feature database. The feature of seven classes (Rural, Forest, Grass, Agriculture,
Wetland, Barren, Water) was constructed in this study, it will be served in a network to user for image classification training data
sets. Proposed method will be higher classification accuracy than that of traditional pixel-based supervised classification and gives
convenient environment to users.
1. INTRODUCTION
The remote sensing technology is currently being offered a
wide variety of digital imagery that covers most of the Earth's
surface. This up-to-date image data is a promising tool for
producing accurate land cover maps. To maximize the benefit
of such data, automatic and efficient classification methods are
needed. To achieve this objective, pixel-based classification has
been extensively used for the past years. Currently the
prospects of a new classification concept, object-based
classification, are being investigated. Recent studies have
proven the superiority of the new .concept over traditional
classifiers (Each, 2003; Darwish, 2003; Mitri, 2002; Niemeyer,
2001; Sande, 2003). The new concepts basic principle is to
make use of important information (shape, texture and
contextual information) that is present only in meaningful
image objects and their mutual relationships.
In order to obtain image objects, classification software is
developed by ours. It gives convenient environment to non-
specialists, because operated automatically. And, feature
database is constructing for automatic land cover classification.
Feature database has information of seven class (water, rural,
barren, wetland, grass, forest, agriculture) features in Landsat
images. Proposed method will be higher classification accuracy
than that of traditional pixel-based supervised classification and
gives convenient environment to non-specialist users.
2. OBJECT ORINTED CLASSIFICATION
The object oriented classification concept is that important
semantic information necessary to interpret an image is not
represented in single pixels, but in meaningful image objects
and their mutual relations. Image analysis is based on
contiguous, homogeneous image regions that are generated by
initial image segmentation. Connecting all the regions, the
o
image content is represented as a network of image objects.
These image objects act as the building blocks for the
subsequent image analysis. In comparison to pixels, image
objects carry much more useful information. Thus, they can be
characterized by far more properties such as form, texture,
neighbourhood or context, than pure spectral or spectral
derivative information (Baatz, 1999).
2.1 Segmentation
Adjacent, similar pixels are aggregated into segments as long as
the heterogeneity in the spectral and spatial domains is
minimized in this step. Neighbouring segments are fused to a
new segment if the resulting heterogeneity is minimized and
below a specified level. The definition of heterogeneity is
flexible and consists of a trade-off between homogeneity in the
spectral domain (e.g. backscatter values in various channels)
and form/shape in the spatial domain. Homogeneity in the
spectral domain is defined by a weighted standard deviation
over the spectral channels. Homogeneity of shape depends on
the ratio of an object’s border length to the object’s total
number of pixels (compactness), and the ratio between the
lengths of an object's border to the length of the object’s
bounding box (smoothness). Compactness is minimum for a
square; smoothness is minimum if the object borders are not
frayed (Benz, 2001).
2.2 Classification
Usually classifying means assign a number of objects to a
certain class according to the class’s description. Thereby, a
class description is a description of the typical properties or
conditions the desired classes have. The objects then become
assigned (classified) according to whether they have or have not
met these properties/conditions. In terms of database language
* Corresponding author. This is useful to know for communication with the appropriate person in cases with more than one author.
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