Biodiversity Information Science and Standards : Conference Abstract
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Corresponding author: Lara Lloret (lloret@ifca.unican.es), Ignacio Heredia (iheredia@ifca.unican.es), Fernando Aguilar (aguilarf@ifca.unican.es), Elisabeth Debusschere (elisabeth.debusschere@vliz.be), Klaas Deneudt (klaas.deneudt@vliz.be), Francisco Hernandez (francisco.hernandez@vliz.be)
Received: 12 Apr 2018 | Published: 28 May 2018
© 2018 Lara Lloret, Ignacio Heredia, Fernando Aguilar, Elisabeth Debusschere, Klaas Deneudt, Francisco Hernandez
This is an open access article distributed under the terms of the Creative Commons Attribution License (CC BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Citation: Lloret L, Heredia I, Aguilar F, Debusschere E, Deneudt K, Hernandez F (2018) Convolutional Neural Networks for Phytoplankton identification and classification. Biodiversity Information Science and Standards 2: e25762. https://doi.org/10.3897/biss.2.25762
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Phytoplankton form the basis of the marine food web and are an indicator for the overall status of the marine ecosystem. Changes in this community may impact a wide range of species (
In this work we present our approach to the use of CNNs for the identification and classification of phytoplankton, testing it on several benchmarks and comparing with previous classification techniques. The network architecture used is ResNet50 (
Deployment and exploitation of the current framework is supported by the recently started European Union Horizon 2020 programme funded project DEEP-Hybrid-Datacloud (Grant Agreement number 777435), which supports the expensive training of the system needed to develop the application and provides the necessary computational resources to the users.
deep learning, phytoplankton, Convolutional Neural Networks, identification, machine learning, classification
Lara Lloret
Biodiversity Information Standards (TDWG) 2018, Dunedin, NZ
EU Horizon 2020 framework programme project DEEP-Hybrid-Datacloud (Grant Agreement number 777435)