Frontiers in Marine Science (Apr 2023)

EchoAI: A deep-learning based model for classification of echinoderms in global oceans

  • Zhinuo Zhou,
  • Ge-Yi Fu,
  • Yi Fang,
  • Ye Yuan,
  • Hong-Bin Shen,
  • Chun-Sheng Wang,
  • Xue-Wei Xu,
  • Peng Zhou,
  • Xiaoyong Pan

DOI
https://doi.org/10.3389/fmars.2023.1147690
Journal volume & issue
Vol. 10

Abstract

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IntroductionIn response to the need for automated classification in global marine biological studies, deep learning is applied to image-based classification of marine echinoderms.MethodsImages of marine echinoderms are collected and classified according to their systematic taxonomy. The images belong to 5 classes, 38 orders, 145 families, 459 genera, and 1021 species, respectively. The deep learning model, EfficientNetV2, outperforms the competing model and is chosen for developing the automated classification tool, EchoAI. Then, the EfficientNetV2-based tool, EchoAI is applied to each taxonomic level.ResultsThe accuracy for the test dataset was 0.980 (class), 0.876 (order), 0.738 (family), 0.612 (genus), and 0.469 (species), respectively. Online prediction service is provided.DiscussionThe EchoAI model and results are facilitated for investigating the diversity, abundance and distribution of species at the global scale, and the methodological strategy can also be applied to image classification of other categories of marine organisms, which is of great significance for global marine studies. EchoAI is freely available at http://www.csbio.sjtu.edu.cn/bioinf/EchoAI/ for academic use.

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