Full text: Resource and environmental monitoring

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e The spatial textures are different. 
2. SEGMENTATION USING GMRF 
MODEL 
2.1 GMRF Model 
SAR data are generally processed using mul- 
tilook averaging techniques in order to reduce 
the speckle level. It has been shown that the 
probability density function (pdf) of multilook 
SAR intensities is the Gamma distribution (Rig- 
not and Chellappa 1993, Lee et al 1994). How- 
ever, according to the Central Limit Theorem in 
statistics, such data distributions can be consid- 
ered to be approximately normal (Gaussian) dis- 
tributions with the error in an acceptable limit 
(Dong et al, 1998a). One of the advantages of 
assuming Gaussian distributions is that mathe- 
matical descriptions for such a distribution are 
more complete. It has been shown that the seg- 
mentation results using Gaussian distribution is 
slightly better than that of a Gamma distribu- 
tion (Dong et al, 1998a). 
The GMRF model assumes that the distribution 
of the intensity of a uniform area in SAR image 
is to be Gaussian. Secondly it assumes that the 
texture is only of local features, i.e., the value of 
a pixel is correlated only with its nearby pixels. 
Therefore, if we have n-channel measurements, 
the conditional probability density function of 
the measurement vector X given a region S can 
be written as, 
1 
@n-PjcH7 
eep {-3E"C7B} (1) 
p(X|S) = 
where T' denotes transpose, E is a zero mean 
Gaussian noise vector in which each of its ele- 
ment is a linear combination of noise errors tak- 
ing account of measurements of its spatial neigh- 
bouring pixels, as, 
N 
e; = (zig-£f)- 3 tir (2ix — ii) 
k=l 
12d un (2) 
where x; denotes the ith measurement at the 
current pixel position 0, z; is the mean value 
of the ith measurement for cluster S, and zi, 
k = 1,2, -- -, N, is the measurement of the neigh- 
bourhood position k for ith measurement. C 
denotes a n x n symmetrical noise covariance 
matrix with its element cj; — E(ei;e;). tix are 
model parameters reflecting textures in the im- 
age (Panjwani and Healey 1995). If all t;x — 0, 
the definition of of the covariance matrix can 
be regarded as the traditional definition without 
considering textures. 
Consider an image having been partitioned into 
a finite number of segments and each segment 
to be only a part of (or a whole of) a uniform 
object. The conditional probability of all pixels 
in Segment S belonging to that segment is the 
product of conditional probability densities of all 
pixels in S. We have (Dong et al 1998b), 
p(X,S;seS) = [[».(X.IS) 
SES 
- [entero] eoo m 
where M, is the number of pixels in the cluster, 
S. Finding the maximum conditional probabil- 
ity in (3) is equivalent to finding the minimum 
determinant of C. Therefore, the optimal model 
parameters tj, can be found by minimising C. 
2.2 Segmentation 
The segmentation using the GMRF model is im- 
plemented in two steps: initial segmentation fol- 
lowed by segment merging. 
Initial segmentation is essential when using the 
GMRF model in segmentation process, as the 
model parameter estimation requires segment 
statistics. Because the model possesses the fea- 
ture of merging only, it is very important to en- 
sure that each initial segment is only part of (or 
the whole of) one cluster. Although each pixel 
definitely belongs to only one cluster, it cannot 
be considered as the initial segmentation, as its 
statistics cannot be computed. "Techniques of 
wavelet filtering, edge detection and watershed 
process are used to obtain the initial segmenta- 
tion (Dong et al, 1998b). The initial segmenta- 
tion is generally conservative in order to ensure 
that each segment belongs to no more than one 
cluster. 
Starting from the initial segmentation, the pro- 
cess of segment merging is iterated. A merging 
ratio, which is the ratio of a priori merging max- 
imum likelihood probability to a posterior merg- 
ing maximum likelihood probability, is used as 
a criterion to determine the process of segment 
merging (Dong et al, 1998b) At each iteration, 
all spatially adjacent segments are considered, 
and only the pair which has the minimum merg- 
ing ratio is merged. In the end either a number 
International Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998 
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