Istanbul 2004
niques with
help airfield
his paper, we
obstructions
the Airfield
obstructions
manager can
s from the
an automatic
‘his will meet
identification
ed number of
rinciples of
sity Press.
1 of Control
ogrammetric
;.
- information
SPRS Annual
ligital terrain
. Proc. of the
p.
g: A Remote
echniques of
p.
Information
ation Safety,
informatics,
01. Airfield
ip.
s: Planning,
AcGraw-Hill
technologies
December
>
Dr. Richard
niversity of
latasets. The
nsortium.
USE OF STATISTICAL DISTRIBUTION FOR SEGMENTATION
OF SAR IMAGENS OF OCEANIC AREAS
R.F.Rocha
Remote Sensing Division, Hydrographic Navy Center, Av. Baráo de Jaceguay s/n, 24048-900,
Niteroi, RJ, Brasil - renatofrocha@hotmail.com
KEY WORDS: SAR, Statistics, Ship Detection, Processing, Image, Algorithms, Oceans, Remote Sensing.
ABSTRACT:
In this work the use of statistical techniques will be approached for segmentation of SAR images, with the purpose of ship detection,
being used RADARSAT images of the Brazilian coast. As described in Rocha et al (2001) and Rocha and Stech (2003), a specific
software for ship detection was developed where, based on Eldhuset (1996), Vachon et al (1997), Oliver and Quegan (1998), Zaart
et al (1999), Ferreira et al (2000) and Macedo et al (2001), some routines were implemented for the use of several statistical
distributions for the segmentation of the images, as, for example, the Weibull, Gama, and K distributions. Initially, the shape and
scale factors were dear in function of the statistical characteristics of each image, as average, variance and standard deviation.
However due to the variability of these characteristics in agreement with each image, they were established values patterns for these
factors, that allowed a desirable adaptation of the curve of the distribution to the curve of the histogram of the image. These routines
were, then, tested for this group of images and its results were analyzed. The results were analyzed individually, through a
comparison among them and, also, using a RGB composition among them.
1. INTRODUCTION
Brazil possesss a vast territorial sea and the necessity of a
control on targets if it makes indispensable. Diverse reasons
motivate us to develop technologies directed toward the ships
detection, as cited for Fingas and Brown (2000), such as the
combat to the illegal fishing, the combat to the drug traffic and
the control of our territorial sea.
Initially created for military use, diverse targets detection and
monitoring systems had been developed, being called
Automatic Targets Recognition systems (ATR). In the last
years satellites images have been used for the monitoring and
the detection of oceanic targets and boats. McDonnel & Lewis
(1978) demonstrated that the ship detection of great load is
theoretically possible in the visible bands with LANDSAT
images. However, due to problems of clouds covering and low
temporary repetitivity, this methodology was not made possible
operationally.
With the development of the technology of the synthetic
aperture radar (SAR) and the appearance of satellites using this
technology, an growing number of works has been developed in
the most several areas of performance in the last years. Such
fact made with that innumerable techniques for the SAR images
processing were developed, in order to allow a convenient
extration of information, according to the area of interest. Due
to the inherent characteristics its formation, SAR images have a
factor that make difficult its interpretation, that is speckle,
whose reduction, either total or partial, besides difficult, it can
cause the loss of some information. Staples ct al. (1997)
demonstrated the viability of the use of RADARSAT SAR
Images for ships detection. The results of this study indicated
that the detection of ships with SAR images depends on a series
of factors, such as: direction and intensity of the wind, size of
the ship, route of the ship in relation to the direction of sought
of the radar and the direction of aimed at of the radar in relation
to the direction of the wind.
Le)
CA
2. METHODOLOGY
The area of study focused in this work is situated in the area of
Santos (SP), one of most important and busy harbor of Brazil.
It was used in this work a RADARSAT SAR image, Standard
mode, acquired on December 17, 2003.
Amongst the several referring existing works to this theme, we
base our work on the methodologies described by Eldhuset
(1996), Vachon et al (1997), Oliver and Quegan (1998), Zaart et
al (1999), Ferreira et al (2000), Fernandes (1998) and Macedo
et al (2001). All these works are base on the use of statistical
distributions for segmentation of SAR images. Amongst these
diverse statistical distributions, K distribution has been used as
a flexible tool for modelling of data deriving of a SAR image,
as described by Yanasse et al (1994). In the case of SAR images
of oceanic areas especially, Vachon et al (1997) corroborates
the statement of Yanasse et al (1994) and uses K distribution for
ship detection. However, as described in Oliver and Quegan
(1998), other statistical distributions can also be used in the
SAR image processing. According to this author, the Rayleigh,
Weibull and Gama distributions can also be used for the SAR
image processing, depending on the area of study. Some other
authors also demonstrated the adaptation of these distributions
for the SAR image processing. The distribution Gamma is also
used for the segmentation of SAR images for Zaart et al (1999).
Ferreira et al (2000), Fernandes (1998) and Macedo et al (2001)
demonstrated the use of the Weibull distribution in the
segmentation of SAR images. Already in the method
demonstrated by Eldhuset (1996) a new image is generated after
the use of some statistical parameters, as mean and variance.
The detection of possible targets in SAR images is
accomplished by means of the great difference of values of grey
level presented by ships in contrast with the water. In general
way, in a SAR image the ships are present as points with high
values of grey level, while the water is presented as points with
low values of grey level, except for the pixels of water strongly
contaminated by speckle. However these basic characteristics