Journal article Open Access

A cloud based architecture capable of perceiving and predicting multiple vessel behaviour

Zissis, Dimitrios; Xidias, Elias K.; Lekkas, Dimitrios


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        <foaf:name>Lekkas, Dimitrios</foaf:name>
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    <dct:title>A cloud based architecture capable of perceiving and predicting multiple vessel behaviour</dct:title>
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