Full text: Proceedings, XXth congress (Part 7)

  
OIL SPILL DETECTION USING RBF NEURAL NETWORKS AND SAR DATA 
K. Topouzelis * *, V. Karathanassi ^, P. Pavlakis ^, D. Rokos à 
? Laboratory of Remote Sensing, S 
School of Rural and Surveying Engineering, National Technical University of Athens, 
Heroon Polytechniou 9, GR-15780, Greece, ktopo@mail.ntua.gr 
b Laboratory of Remote Sensing, National Technical University of Athens, (karathan, rslab)@survey.ntua.gr 
¢ National Centre for Marine Research (Greece), ppavla@ncmr.gr 
PS WG VILVS 
KEY WORDS: Neural, Networks, SAR, Environment, Pollution, 
ABSTRACT: 
Illegal oil spill discharges cause seri 
for the detection of oil spills in the marine env 
However, radar backscatter values for oil spills are 
phenomena because dampen capillary a 
spill detection have been conducted. Most of these stu 
Bayesian probability of being oil-spills. The drawback of these m 
involved. The use of Neural Networks (NNs) in remote sensing 
linear data of a multidimensional input space. Furt 
and output as they determine their own rel 
Multilayer Perceptron (MLP) neural network and different training algorithms for o 
paper another approach of NN use in oil spill detection is presented. 
in order to be compared with the Multilayer Perceptron. For both ne 
Sea, Extraction, Detection 
ous damage to marine ecosystems. Synthetic Aperture Radar (SAR) images are extensively used 
ironment, as they are not affected by local weather conditions and cloudiness. 
very similar to backscatter values for very calm sea areas and other ocean 
nd short gravity waves is caused by the presence of an oil spill. Several studies aiming at oil 
dies rely on the detection of dark areas, which are objects with a high 
ethods is a complex process, because there are many non linearities 
has increased significantly as NN can simultaneously handle non- 
hermore, NN do not require an explicitly well-defined relationship between input 
ationships based on input/output values. In a previous study, the potential of the 
il spill classification were investigated. In this 
The Radial Basis Function (RBF) neural network is investigated 
tworks, several topologies are examined and their performance 
is evaluated. MLPs appear to be superior than RBFs in detecting oil spills on SAR images. 
1. INTRODUCTION 
Oil spills are seriously affecting the marine ecosystem and 
cause political and scientific concern since they have serious 
affect on fragile marine and coastal ecosystem. The amount of 
pollutant discharges and associated effects on the marine 
environment are important parameters in evaluating sea water 
quality. Satellite images can improve the possibilities for the 
detection of oil spills as they cover large areas and offer an 
economical and easier way of continuous coast areas patrolling. 
Synthetic Aperture Radar images have been widely used for oil 
spill detection. The presence of oil film on the sea surface 
damps the small waves and drastically reduces the measured 
backscatter energy, resulting in darker areas in SAR imagery 
(Martinez and Moreno, 1996; Pavlakis et al, 1996; Kubat et al, 
1998; Anne et al, 1999; Frate et al, 2000; Gade et al, 2000). 
However, dark areas may be also caused by other phenomena, 
like locally low winds, currents or natural sea slicks called 
‘lookalikes’. 
Several studies aiming at semi-automatic or automatic oil spill 
detection can be found in literature (Martinez and Moreno, 
1996; Ziemke, 1996; Kubat et al, 1998; Anne et al, 1999; Frate 
et al. 2000 ; Gade et al, 2000, Benelli and Garzelli 1999; Lu, 
1999, Topouzelis et al, 2002). These studies first detect 
manually or with threshold filtering dark areas on the image 
which could be oil spills. If not supported by visual inspection 
(Lu et al, 1999: Frate et al, 2000), dark areas detection 
prerequires a threshold wind speed (Anne, 1999; Gade et al, 
* Corresponding author. 
2000) sufficient to generate the sea state (Frate et al, 2000). The 
extent of the sea state conditions is consequently included in the 
estimation of the strength of the contrast signal that an oil spill 
yields. When dark areas are detected, statistical classification 
methods (e.g. Bayesian) are applied to characterize the dark 
areas as oil spills or ‘lookalike’ objects. For this purpose, 
estimation of a number of spectral and spatial features of the 
dark areas (geometric, surrounding, backscattering, etc.) is 
prerequired. In relevant studies, classification methods are 
usually applied only on the dark areas, considering them as 
objects (Anne, 1999; Frate et al, 2000), whilst dark areas 
detection methods are based on pixel-basis processing. The 
transition from the detection step to the characterization one 
needs user interference in terms of masking, coding, and 
selecting the dark objects in order to proceed to classification 
processing (Topouzelis et al, 2002). 
Neural networks have been employed to process remote sensing 
images and have achieved improved accuracy compared to 
traditional statistical methods (Kanellopoulos, 1997; Kavzoglu 
and Mather, 2003). This success derives from neural network 
characteristics. A single neuron can be compared with a 
multivariance linear regression model, which works without 
any a priori assumptions concerning the statistical nature of the 
data set. The massive parallel work of several neurons gives 
further capabilities for solving complex problems in the remote 
sensing area. Moreover, NN are able to learn from existing 
examples, making the classification adaptive and objective 
(Kanellopoulos, 1997). 
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