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Deep Semantic Segmentation in an AUV for Online Posidonia Oceanica Meadows identification

2018-06-22Code Available0· sign in to hype

Miguel Martin-Abadal, Eric Guerrero-Font, Francisco Bonin-Font, Yolanda Gonzalez-Cid

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Abstract

Recent studies have shown evidence of a significant decline of the Posidonia oceanica (P.O.) meadows on a global scale. The monitoring and mapping of these meadows are fundamental tools for measuring their status. We present an approach based on a deep neural network to automatically perform a high-precision semantic segmentation of P.O. meadows in sea-floor images, offering several improvements over the state of the art techniques. Our network demonstrates outstanding performance over diverse test sets, reaching a precision of 96.57% and an accuracy of 96.81%, surpassing the reliability of labelling the images manually. Also, the network is implemented in an Autonomous Underwater Vehicle (AUV), performing an online P.O. segmentation, which will be used to generate real-time semantic coverage maps.

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