Modeling the Operating Characteristics of IoT for Underwater Sound Classification
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Stelios Neophytou | Ehson Abdi | Ioannis Kyriakides | Stelios N. Neophytou | Theofylaktos Pieri | Christos C. Constantinou | Ilias Alexopoulos | Erricos Michaelides | Jerald Reodica | Daniel R. Hayes | Ilias Alexopoulos | I. Kyriakides | Erricos Michaelides | T. Pieri | Ehson Abdi | J. Reodica | D. Hayes
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