Deep learning for Plankton and Coral Classification
Alessandra Lumini, Loris Nanni, Gianluca Maguolo

TL;DR
This paper explores the use of ensemble deep learning models, combining various CNN architectures trained on multiple datasets, to improve automated classification of plankton and coral images for ocean ecosystem monitoring.
Contribution
It introduces a novel ensemble approach of fine-tuned CNNs trained on diverse datasets, demonstrating significant performance gains over existing methods in underwater image classification.
Findings
Ensemble models outperform single CNN architectures in classification accuracy.
Fine-tuning pretrained CNNs on underwater datasets enhances performance.
Heterogeneous ensembles provide substantial improvements across multiple datasets.
Abstract
Oceans are the essential lifeblood of the Earth: they provide over 70% of the oxygen and over 97% of the water. Plankton and corals are two of the most fundamental components of ocean ecosystems, the former due to their function at many levels of the oceans food chain, the latter because they provide spawning and nursery grounds to many fish populations. Studying and monitoring plankton distribution and coral reefs is vital for environment protection. In the last years there has been a massive proliferation of digital imagery for the monitoring of underwater ecosystems and much research is concentrated on the automated recognition of plankton and corals. In this paper, we present a study about an automated system for monitoring of underwater ecosystems. The system here proposed is based on the fusion of different deep learning methods. We study how to create an ensemble based of…
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Taxonomy
MethodsCorrelation Alignment for Deep Domain Adaptation
