Identification of morphologically cryptic species with computer vision models: wall lizards (Squamata: Lacertidae: Podarcis) as a case study

Author:

Pinho Catarina12ORCID,Kaliontzopoulou Antigoni3,Ferreira Carlos A4,Gama João45

Affiliation:

1. CIBIO, Centro de Investigação em Biodiversidade e Recursos Genéticos, InBIO Laboratório Associado, Campus de Vairão, Universidade do Porto , 4485-661 Vairão , Portugal

2. BIOPOLIS Program in Genomics, Biodiversity and Land Planning, CIBIO , Campus de Vairão, 4485-661 Vairão , Portugal

3. Department of Evolutionary Biology, Ecology and Environmental Sciences, and Biodiversity Research Institute (IRBio), Universitat de Barcelona , E-08028 Barcelona, Catalonia , Spain

4. INESC TEC , Rua Dr. Roberto Frias, 4200-465 Porto , Portugal

5. FEP - University of Porto , Rua Dr. Roberto Frias, 4200-464 Porto , Portugal

Abstract

Abstract Automated image classification is a thriving field of machine learning, and various successful applications dealing with biological images have recently emerged. In this work, we address the ability of these methods to identify species that are difficult to tell apart by humans due to their morphological similarity. We focus on distinguishing species of wall lizards, namely those belonging to the Podarcis hispanicus species complex, which constitutes a well-known example of cryptic morphological variation. We address two classification experiments: (1) assignment of images of the morphologically relatively distinct P. bocagei and P. lusitanicus; and (2) distinction between the overall more cryptic nine taxa that compose this complex. We used four datasets (two image perspectives and individuals of the two sexes) and three deep-learning models to address each problem. Our results suggest a high ability of the models to identify the correct species, especially when combining predictions from different perspectives and models (accuracy of 95.9% and 97.1% for females and males, respectively, in the two-class case; and of 91.2% to 93.5% for females and males, respectively, in the nine-class case). Overall, these results establish deep-learning models as an important tool for field identification and monitoring of cryptic species complexes, alleviating the burden of expert or genetic identification.

Funder

Fundação para a Ciência e a Tecnologia

Spanish State Research Agency and the European Social Fund

Publisher

Oxford University Press (OUP)

Subject

Animal Science and Zoology,Ecology, Evolution, Behavior and Systematics

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