Posidonia oceanica (PO) meadows are crucial underwater ecosystems that provide significant environmental benefits, including carbon sequestration and habitat for marine life. Accurate monitoring and mapping of these meadows are essential for their conservation but challenging due to the complexities of the subsea environment. This paper presents a comparative analysis of various Convolutional Neural Network (CNN) models for Semantic Segmentation of PO in underwater optical imagery. The study evaluates several state-of-the-art CNN architectures, including U-Net, Feature Pyramid Network (FPN), Pyramid Attention Network (PANet), Pyramid Scene Parsing Network (PSPNet), and DeepLabV3+. These models are trained and tested on multiple datasets to assess their performance in identifying and segmenting PO. The analysis considers relevant indices such as Average Precision (AP) and Area Under the Curve (AUC) to provide a comprehensive quantitative evaluation. This work aims to enhance the automation of marine ecosystem monitoring, contributing to the preservation and management of these vital underwater habitats.

Comparative Analysis of CNN Models for Semantic Segmentation of Posidonia Oceanica Meadows / Liverani, Gherardo; Magi, Adele; Cecchi, Lorenzo; Bucci, Alessandro; Topini, Alberto; Ruscio, Francesco; Secciani, Nicola; Costanzi, Riccardo; Ridolfi, Alessandro. - ELETTRONICO. - (2024), pp. 1-6. ( 2024 IEEE/OES Autonomous Underwater Vehicles Symposium, AUV 2024 Boston, MA, USA 18-20 September 2024) [10.1109/auv61864.2024.11030783].

Comparative Analysis of CNN Models for Semantic Segmentation of Posidonia Oceanica Meadows

Liverani, Gherardo
;
Magi, Adele;Cecchi, Lorenzo;Bucci, Alessandro;Topini, Alberto;Secciani, Nicola;Ridolfi, Alessandro
2024

Abstract

Posidonia oceanica (PO) meadows are crucial underwater ecosystems that provide significant environmental benefits, including carbon sequestration and habitat for marine life. Accurate monitoring and mapping of these meadows are essential for their conservation but challenging due to the complexities of the subsea environment. This paper presents a comparative analysis of various Convolutional Neural Network (CNN) models for Semantic Segmentation of PO in underwater optical imagery. The study evaluates several state-of-the-art CNN architectures, including U-Net, Feature Pyramid Network (FPN), Pyramid Attention Network (PANet), Pyramid Scene Parsing Network (PSPNet), and DeepLabV3+. These models are trained and tested on multiple datasets to assess their performance in identifying and segmenting PO. The analysis considers relevant indices such as Average Precision (AP) and Area Under the Curve (AUC) to provide a comprehensive quantitative evaluation. This work aims to enhance the automation of marine ecosystem monitoring, contributing to the preservation and management of these vital underwater habitats.
2024
Proceedings - 2024 IEEE/OES Autonomous Underwater Vehicles Symposium, AUV 2024
2024 IEEE/OES Autonomous Underwater Vehicles Symposium, AUV 2024
Boston, MA, USA
18-20 September 2024
Goal 9: Industry, Innovation, and Infrastructure
Liverani, Gherardo; Magi, Adele; Cecchi, Lorenzo; Bucci, Alessandro; Topini, Alberto; Ruscio, Francesco; Secciani, Nicola; Costanzi, Riccardo; Ridolfi...espandi
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1430954
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