Embedded vision systems for ship recognition
Abstract:
Maritime security includes reliable identification of ship
entering and leaving a nation's territorial waters. Automated systems that
could identify a ship could complement existing electronic signal
identification methods. The use of Forward Looking Infrared (FLIR) and
Synthetic Aperture Radar (SAR) enables ship image acquisition round-the-clock
but their cost and complexity means few installations are available. The use of
lower cost embedded vision systems using visible light for surveillance in a
low-bandwidth sensor network could complement existing surveillance methods to
improve surveillance coverage. This paper presents an overview of automatic
ship detection methods with a view towards embedded implementation of suitable
algorithms on optical smart cameras. We present results on applying Hu's moment
invariants for feature extraction on several classification algorithms. We
achieved accuracies of close to 80% using the KStar and multilayer perceptron
classifiers in recognizing one of four ship classes.
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