Artikel: Improving Pantanal fish species recognition through taxonomic ranks in convolutional neural networks
Ecological informatics. 2019 Sept., v. 53
2019
Abstract: Fish species recognition is an important task to preserve ecosystems, feed humans, and tourism. In particular, the Pantanal is a wetland region that harbors hundreds of species and is considered one of the most important ecosystems in the world. In this ... ...
Abstract | Fish species recognition is an important task to preserve ecosystems, feed humans, and tourism. In particular, the Pantanal is a wetland region that harbors hundreds of species and is considered one of the most important ecosystems in the world. In this paper, we present a new method based on convolutional neural networks (CNNs) for Pantanal fish species recognition. A new CNN composed of three branches that classify the fish species, family and order is proposed with the aim of improving the recognition of species with similar characteristics. The branch that classifies the fish species uses information learned from the family and order, which has shown to improve the overall accuracy. Results on unrestricted image dataset showed that the proposed method provides superior results to traditional approaches. Our method obtained an accuracy of 0.873 versus 0.864 of traditional CNN in recognition of 68 fish species. In addition, our method provides fish family and order recognition, which obtained accuracies of 0.938 and 0.96, respectively. We hope that, with these promising results, an automatic tool can be developed to monitor species in an important region such as the Pantanal. |
---|---|
Schlagwörter | data collection ; ecosystems ; fish ; humans ; neural networks ; tourism ; wetlands ; Pantanal |
Sprache | Englisch |
Erscheinungsverlauf | 2019-09 |
Erscheinungsort | Elsevier B.V. |
Dokumenttyp | Artikel |
ZDB-ID | 2212016-6 |
ISSN | 1878-0512 ; 1574-9541 |
ISSN (online) | 1878-0512 |
ISSN | 1574-9541 |
DOI | 10.1016/j.ecoinf.2019.100977 |
Datenquelle | NAL Katalog (AGRICOLA) |
Volltext online
Zusatzmaterialien
Kategorien
Verfügbar in ZB MED Bonn
Z 7643: Hefte anzeigen |
Über subito bestellen
Dieser Service ist kostenpflichtig (siehe Lieferbedingungen von subito). Bestellungen, die einen Artikel nebst Supplementary Material umfassen, werden grundsätzlich wie mehrfache Bestellungen bearbeitet. Gebühren fallen in diesen Fällen für jede einzelne Bestellung an.
Fernleihe an ZB MED
Sie können sich den gewünschten Titel als lokale Nutzerin oder lokaler Nutzer von ZB MED direkt an den Standort Köln schicken lassen.