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Implications of single-stage deep learning networks in real-time zooplankton identification

Abstract

Zooplankton are key ecological components of the marine food web. Currently, laboratory-based methods of zooplankton identification are manual, time-consuming, prone to human error and require expert taxonomists. Therefore, alternative methods are needed. In this study, we describe, implement and compare the performance of six state-of-the-art single-stage deep learning models for automated zooplankton identification. The highest prediction accuracy achieved is 99.50%. The fastest detection speed is 285 images per second, making the models suitable for real-time zooplankton classification. We validate the predictions of the generated models on unseen images. The results demonstrate the capabilities of the latest deep learning models in zooplankton identification.

Category

Academic article

Client

  • Research Council of Norway (RCN) / 262741

Language

English

Author(s)

  • Sadaf Ansari
  • Dattesh V. Desai
  • Aya Saad
  • Annette Stahl

Affiliation

  • India
  • SINTEF Ocean / Aquaculture
  • Norwegian University of Science and Technology

Year

2023

Published in

Current Science

ISSN

0011-3891

Volume

125

Issue

11

Page(s)

1259 - 1266

View this publication at Cristin