Title of article :
An automatic approach to the detection and extraction of mine features in sidescan sonar
Author/Authors :
S.، Reed, نويسنده , , Y.، Petillot, نويسنده , , J.، Bell, نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Pages :
-8
From page :
9
To page :
0
Abstract :
Mine detection and classification using high-resolution sidescan sonar is a critical technology for mine counter measures (MCM). As opposed to the majority of techniques which require large training data sets, this paper presents unsupervised models for both the detection and the shadow extraction phases of an automated classification system. The detection phase is carried out using an unsupervised Markov random field (MRF) model where the required model parameters are estimated from the original image. Using a priori spatial information on the physical size and geometric signature of mines in sidescan sonar, a detection-orientated MRF model is developed which directly segments the image into regions of shadow, seabottom-reverberation, and object-highlight. After detection, features are extracted so that the object can be classified. A novel co-operating statistical snake (CSS) model is presented which extracts the highlight and shadow of the object. The CSS model again utilizes available a priori information on the spatial relationship between the highlight and shadow, allowing accurate segmentation of the objectʹs shadow to be achieved on a wide rang of seabed types.
Keywords :
Learning capability , neural-network modularity , Storage capacity , two-hidden-layer feedforward networks (TLFNs)
Journal title :
IEEE Journal of Oceanic Engineering
Serial Year :
2003
Journal title :
IEEE Journal of Oceanic Engineering
Record number :
78942
Link To Document :
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