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Automated identification of aquatic insects: A case study using deep learning and computer vision techniques.
Simovic, Predrag; Milosavljevic, Aleksandar; Stojanovic, Katarina; Radenkovic, Milena; Savic-Zdravkovic, Dimitrija; Predic, Bratislav; Petrovic, Ana; Bozanic, Milenka; Milosevic, Djuradj.
Affiliation
  • Simovic P; Department of Biology and Ecology, Faculty of Science, University of Kragujevac, Radoja Domanovica 12, 34000 Kragujevac, Serbia. Electronic address: predrag.simovic@pmf.kg.ac.rs.
  • Milosavljevic A; Faculty of Electronic Engineering, University of Nis, Aleksandra Medvedeva 14, 18000 Nis, Serbia. Electronic address: aleksandar.milosavljevic@elfak.ni.ac.rs.
  • Stojanovic K; Department of Zoology, Faculty of Biology, University of Belgrade, Studentski trg 16, Belgrade, Serbia. Electronic address: k.bjelanovic@bio.bg.ac.rs.
  • Radenkovic M; Department of Biology and Ecology, Faculty of Science, University of Kragujevac, Radoja Domanovica 12, 34000 Kragujevac, Serbia. Electronic address: milena.radenkovic@pmf.kg.ac.rs.
  • Savic-Zdravkovic D; Department of Biology and Ecology, Faculty of Sciences and Mathematics, University of Nis, Visegradska 33, 18000 Nis, Serbia. Electronic address: dimitrija.savic@pmf.edu.rs.
  • Predic B; Faculty of Electronic Engineering, University of Nis, Aleksandra Medvedeva 14, 18000 Nis, Serbia. Electronic address: bratislav.predic@elfak.ni.ac.rs.
  • Petrovic A; Department of Biology and Ecology, Faculty of Science, University of Kragujevac, Radoja Domanovica 12, 34000 Kragujevac, Serbia. Electronic address: ana.petrovic@pmf.kg.ac.rs.
  • Bozanic M; Department of Zoology, Faculty of Biology, University of Belgrade, Studentski trg 16, Belgrade, Serbia. Electronic address: mika.zunic@bio.bg.ac.rs.
  • Milosevic D; Department of Biology and Ecology, Faculty of Sciences and Mathematics, University of Nis, Visegradska 33, 18000 Nis, Serbia. Electronic address: djuradj.milosevic@pmf.edu.rs.
Sci Total Environ ; 935: 172877, 2024 Jul 20.
Article in En | MEDLINE | ID: mdl-38740196
ABSTRACT
Deep learning techniques have recently found application in biodiversity research. Mayflies (Ephemeroptera), stoneflies (Plecoptera) and caddisflies (Trichoptera), often abbreviated as EPT, are frequently used for freshwater biomonitoring due to their large numbers and sensitivity to environmental changes. However, the morphological identification of EPT species is a challenging but fundamental task. Morphological identification of these freshwater insects is therefore not only extremely time-consuming and costly, but also often leads to misjudgments or generates datasets with low taxonomic resolution. Here, we investigated the application of deep learning to increase the efficiency and taxonomic resolution of biomonitoring programs. Our database contains 90 EPT taxa (genus or species level), with the number of images per category ranging from 21 to 300 (16,650 in total). Upon completion of training, a CNN (Convolutional Neural Network) model was created, capable of automatically classifying these taxa into their appropriate taxonomic categories with an accuracy of 98.7 %. Our model achieved a perfect classification rate of 100 % for 68 of the taxa in our dataset. We achieved noteworthy classification accuracy with morphologically closely related taxa within the training data (e.g., species of the genus Baetis, Hydropsyche, Perla). Gradient-weighted Class Activation Mapping (Grad-CAM) visualized the morphological features responsible for the classification of the treated species in the CNN models. Within Ephemeroptera, the head was the most important feature, while the thorax and abdomen were equally important for the classification of Plecoptera taxa. For the order Trichoptera, the head and thorax were almost equally important. Our database is recognized as the most extensive aquatic insect database, notably distinguished by its wealth of included categories (taxa). Our approach can help solve long-standing challenges in biodiversity research and address pressing issues in monitoring programs by saving time in sample identification.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Deep Learning / Insecta Limits: Animals Language: En Journal: Sci Total Environ Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Deep Learning / Insecta Limits: Animals Language: En Journal: Sci Total Environ Year: 2024 Document type: Article
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