Literature DB >> 32000349

Application of deep learning in aquatic bioassessment: Towards automated identification of non-biting midges.

Djuradj Milošević1, Aleksandar Milosavljević2, Bratislav Predić2, Andrew S Medeiros3, Dimitrija Savić-Zdravković4, Milica Stojković Piperac4, Tijana Kostić4, Filip Spasić4, Florian Leese5.   

Abstract

Morphological species identification is often a difficult, expensive, and time-consuming process which hinders the ability for reliable biomonitoring of aquatic ecosystems. An alternative approach is to automate the whole process, accelerating the identification process. Here, we demonstrate an automatic machine-based identification approach for non-biting midges (Diptera: Chironomidae) using Convolutional Neural Networks (CNNs) as a means of increasing taxonomic resolution of biomonitoring data at a minimal cost. Chironomidae were used to build the automatic identifier, as a family of insects that are abundant and ecologically important, yet difficult and time-consuming to accurately identify. The approach was tested with 10 morphologically very similar species from the same genus or subfamilies, comprising 1846 specimens from the South Morava river basin, Serbia. Three CNN models were built utilizing either species, genus, or subfamily data. After training the artificial neural network, images that the network had not seen during the training phase achieved an accuracy of 99.5% for species-level identification, while at the genus and subfamily level all images were correctly assigned (100% accuracy). Gradient-weighted Class Activation Mapping (Grad-CAM) visualized the mentum, ventromental plates, mandibles, submentum, and postoccipital margin to be morphologically important features for CNN classification. Thus, the CNN approach was a highly accurate solution for chironomid identification of aquatic macroinvertebrates opening a new avenue for implementation of artificial intelligence and deep learning methodology in the biomonitoring world. This approach also provides a means to overcome the gap in bioassessment for developing countries where widespread use techniques for routine monitoring are currently limited.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Aquatic macroinvertebrates; Automatic species identification; Biomonitoring; Chironomidae; Computer vision; Machine learning

Mesh:

Year:  2019        PMID: 32000349     DOI: 10.1016/j.scitotenv.2019.135160

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  3 in total

1.  Deep learning and computer vision will transform entomology.

Authors:  Toke T Høye; Johanna Ärje; Kim Bjerge; Oskar L P Hansen; Alexandros Iosifidis; Florian Leese; Hjalte M R Mann; Kristian Meissner; Claus Melvad; Jenni Raitoharju
Journal:  Proc Natl Acad Sci U S A       Date:  2021-01-12       Impact factor: 11.205

Review 2.  Machine learning techniques to characterize functional traits of plankton from image data.

Authors:  Eric C Orenstein; Sakina-Dorothée Ayata; Frédéric Maps; Érica C Becker; Fabio Benedetti; Tristan Biard; Thibault de Garidel-Thoron; Jeffrey S Ellen; Filippo Ferrario; Sarah L C Giering; Tamar Guy-Haim; Laura Hoebeke; Morten Hvitfeldt Iversen; Thomas Kiørboe; Jean-François Lalonde; Arancha Lana; Martin Laviale; Fabien Lombard; Tom Lorimer; Séverine Martini; Albin Meyer; Klas Ove Möller; Barbara Niehoff; Mark D Ohman; Cédric Pradalier; Jean-Baptiste Romagnan; Simon-Martin Schröder; Virginie Sonnet; Heidi M Sosik; Lars S Stemmann; Michiel Stock; Tuba Terbiyik-Kurt; Nerea Valcárcel-Pérez; Laure Vilgrain; Guillaume Wacquet; Anya M Waite; Jean-Olivier Irisson
Journal:  Limnol Oceanogr       Date:  2022-06-30       Impact factor: 5.019

3.  Assessment of ecological impairment of Arctic streams: Challenges and future directions.

Authors:  A S Medeiros; A Williams; D Milošević
Journal:  Ecol Evol       Date:  2021-06-26       Impact factor: 2.912

  3 in total

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