2024
Journal article  Open Access

Advancing automated detection of Nephrops norvegicus burrows in underwater television surveys through machine learning

Papini O., Cecapolli E., Domenichetti F., Martinelli M., Pieri G., Reggiannini M., Zacchetti L.

Deep learning, Video annotation, Dataset augmentation, Fisheries, Nephrops norvegicus 

The paper introduces computer vision methods for automating the detection, recognition, and classification of Nephrops norvegicus burrows in underwater videos. This approach aims to improve accuracy, reduce human errors, and standardize the current manual video analysis process. By using machine learning techniques, the system can automatically process video streams and detect N. norvegicus burrow openings on the seabed. The work also explores the use of data augmentation algorithms to extend the annotated data set, enhancing the performance of the automated system compared to the original manual annotations.

Source: PATTERN RECOGNITION AND IMAGE ANALYSIS, vol. 34 (issue 4)



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BibTeX entry
@article{oai:iris.cnr.it:20.500.14243/514761,
	title = {Advancing automated detection of Nephrops norvegicus burrows in underwater television surveys through machine learning},
	author = {Papini O. and Cecapolli E. and Domenichetti F. and Martinelli M. and Pieri G. and Reggiannini M. and Zacchetti L.},
	year = {2024}
}

NAUTILOS
New Approach to Underwater Technologies for Innovative, Low-cost Ocean obServation


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