EchoPlankton
Dato 1. januar 2026 00:00 – 31. desember 2026 00:00
Full title: Enhancing plankton classification in broadband echosounder data with machine learning
Financing: The Fram Centre (High North Research Centre for Climate and Environmental Research) via the Norwegian Ministry of Climate and Environment
Project lead: Pierre Priou/Akvaplan-niva
Project partners: The Institute of Marine Research and NORCE
Primary objective: To develop a machine learning model for detecting and
classifying plankton layers in broadband echosounder data with limited labels. This approach will serve as a
stepping stone toward the effective processing of plankton data from large acoustic datasets.
Project structure: The primary objective is attained through three specific work packages (WPs), each addressing a specific
research question and hypothesis. In WP1 we identify the best way to prepare broadband echosounder data
to train a ML model to classify zooplankton in WP2. Finally, the results from our approach are summarised
and disseminated in WP3.