A Trainable System for Underwater Pipe Detection

Underwater image processing is widely increased over the last decade. It is a fundamental process for a most part of underwater research applications, because of the need of data acquisition. In this paper we will propose a novel approach of pipe detection in submarine environment. The system draws...

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Veröffentlicht in:Pattern recognition and image analysis 2018-07, Vol.28 (3), p.525-536
Hauptverfasser: Rekik, F., Ayedi, W., Jallouli, M.
Format: Artikel
Sprache:eng
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Zusammenfassung:Underwater image processing is widely increased over the last decade. It is a fundamental process for a most part of underwater research applications, because of the need of data acquisition. In this paper we will propose a novel approach of pipe detection in submarine environment. The system draws much of its power from a representation that describes an object class taking into account structure and content features which are computed through the multi-scale covariance descriptor. This approach describes an object detection model by training a support vector machine classifier using a large set of positive and negative samples. We present result on pipe detection using Maris dataset. Moreover, we show how the representation affects detection performance by considering mono-scale representation using Covariance descr iptor .
ISSN:1054-6618
1555-6212
DOI:10.1134/S1054661818030185