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Image dataset for benchmarking automated fish detection and classification algorithms

Marco Francescangeli, Simone Marini, Enoc Martínez Padró, Joaquín del Río Fernández, Daniel Mihai Toma, Marc Nogueras, Jacopo Aguzzi

2023Scientific Data33 citationsDOIOpen Access PDF

Abstract

Multiparametric video-cabled marine observatories are becoming strategic to monitor remotely and in real-time the marine ecosystem. Those platforms can achieve continuous, high-frequency and long-lasting image data sets that require automation in order to extract biological time series. The OBSEA, located at 4 km from Vilanova i la Geltrú at 20 m depth, was used to produce coastal fish time series continuously over the 24-h during 2013-2014. The image content of the photos was extracted via tagging, resulting in 69917 fish tags of 30 taxa identified. We also provided a meteorological and oceanographic dataset filtered by a quality control procedure to define real-world conditions affecting image quality. The tagged fish dataset can be of great importance to develop Artificial Intelligence routines for the automated identification and classification of fishes in extensive time-lapse image sets.

Topics & Concepts

BenchmarkingComputer scienceAutomationFish <Actinopterygii>Identification (biology)Artificial intelligenceData miningFisheryEcologyEngineeringBiologyMarketingBusinessMechanical engineeringWater Quality Monitoring TechnologiesIdentification and Quantification in FoodRemote-Sensing Image Classification
Image dataset for benchmarking automated fish detection and classification algorithms | Litcius