International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
approaches known as "sequential compound decision theory" and
which attempts to decide the label for one pixel based on the
observation at all other pixels in the image (khazenie ef al., 1990).
More recently, another type of approaches called “global
approaches" have been evolved (Braathen et al, 1993,
Pieczynski, 2000). These new approaches are two types ; MAP
(maximum a posterior probability) and MPM (maximum of
posterior marginal probability) and both present a classic case of
an ill-posed problem (Maroquin et al. 1987) and their solution
must be given through stochastic or deterministic optimization
algorithms. In this paper, we shall solve a MAP problem
according to a Markov Random Field (MRF) model which
provides a methodological framework to avoid combinatorial
problem and effectively incorporate contextual information
through ICM (Iterated Conditional Modes) which is a
deterministic optimization algorithm. The supervised contextual
classifier is applied on data set of SPOT multispectral image
acquired on February 1986 covering initially, an agricultural region
sited in northern of Algeria and contains the famous city of Blida.
Our objective is to obtain an exploitable land cover map to use it
later for change detection process.
2. NOTATION
We assume that a classified image X and observed data Y are
realisations of stochastic processes X and Y, respectively.
yz [r! dy y*] are multispectral data observed through K
spectral bands and are supposed to be acquired on a finite
rectangular lattice W = ls =(ij):1<s<S}, sis the site of the
ijth pixel and S is lattice's area. The set y^ wl e where
s 55V
k = I, 2, ...K, denotes the data taken at the k/h wavelength,
where Bez NG} and NG is the number of observable
grey levels. It is also possible to describe the multispectral data
with y = Ty <= si where y = bi! Mos is a feature
vector observed on the site s called also a spectral signature on
site s.
3. PUNCTUAL CLASSIFICATION APPROACH
Image classification can be done visually, by visual interpretation
of the data, or digitally where numerical procedures, usually
statistically based decision rules, automate the classification
process. While a visual classification is superior in the
interpretation of spatial information (textural and contextual
information), computers can handle the spectral information more
efficiently. Conventional digital classifiers, called also punctual
classifiers, are entirely based on spectral pattern recognition.
Indeed, n punctual classification, the spectral signature y, which
represents the observed intensity vector is the only aspect used to
classify a pixel on site s. The parameters of the distribution are
learnt from training samples in a supervised classification
approach, and from test image pixels by suitable clustering
method in an unsupervised approach. The pixels of the image are
then classified by calculating, from their observed response, the
likelihood that they have come from different classes. By this
procedure, it can be seen that the decision taken for a pixel is
based solely on the response to that pixel. For this. reason,
techniques based on this approach have been called “punctual or
blind approaches” (Braathen er al., 1993). These approaches
have been widely used for classification and have given fairly
good results for a wide variety of images (Desachy, 1991). The
most used supervised punctual method is a maximum likelihood
method where the analyst supervises the classification by
identifying representative areas, so called training zones. These
zones are then described numerically and presented to the
computer algorithm which classifies the pixels of the entire scene
into the respective spectral class that appears to be most alike. In
a maximum likelihood classification, the distribution of the
response pattern of each class is assumed to be normal
(gaussian). It means that the feature vector observed y, is drawn
from a “gaussian distribution”. So, the likelihood probability to
assign a pixel y, to the class x, is given as fellows:
E
Where {ix and Y, are statistic parameters of class xs
s
P Gy)» 0-1 Xs Y X (»-i w)- hin E
estimated during training step process. The decision to assign one
pixel from the analysed scene to a particular class is then given as
follows:
pex if P(yfx)) P(vxi) for each jzi (2)
The accuracy of such methods is very much affected by a “salt
and pepper" appearance characterizing misclassification of some
pixels. It means that intensity vector is insufficient and then leads
to incorrect classification of pixels. In particular of remotely
sensed data, adjacent pixels are related or correlated, both
because imaging sensors acquire significant portions of energy
from adjacent and because ground cover types generally occur
over a region that is large compared with the size of a pixel.
Using coherent contextual information for classification efficiency
and accuracy in remote sensing has long been desired. Contextual
information is important for the interpretation of a scene. When a
pixel is considered in isolation, it may provide incomplete
information about the desired characteristics. However, the
consideration of the pixel in its context, more complete
information might be derived. We can define three kinds of
context: 1) spectral context, 2) spatial context and 3) temporal
context (Khedam e: a/.; 2001). The basic philosophy in non
punctual approaches is that the response and class of two
spatially adjacent pixels are highly related. For example, if (i, j)
and (m, n) are two neighbouring pixels and if (i, j) belongs to
class k, then there is a high possibility that pixel (m, n) also
belongs to the same class k. Therefore, the decision for a pixel is
taken based not only on the observation at (i, j) but also on all
observations at (m, n) where (m, n) is neighbour of (7, j). Non
punctual approaches can be contextual or global (MAP and
MPM) approaches. We are interested in this paper on MAP
approach.
4. MAP CLASSIFICATION APPROACH
In term of global approach where the class assigned to a site
depends not only on the spectral feature of the site itself, but also
on the spectral feature of all pixels in the image, our goal is to find
the optimal classified image X : -Ix, rm X Fa based on the
observed data Y. Each site of the segmented image is to assigned
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