The individual color pattern on the back of Bufotes viridis balearicus (Boettger, 1880) allows individual photo identification recognition for population studies.
N. Lassnig, Sergi Guasch-Martínez, Samuel Pinya Fernández
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引用次数: 0
Abstract
This study explores the potential of Photo-Identification Methods (PIM) as a viable, noninvasive, and ethical tool for wildlife studies, with a specific focus on anuran species such as Bufotes viridis balearicus (Boettger, 1880). Although the Automatic Photo Identification Suit (APHIS) software was initially designed for lizard identification, our research shows its adaptability for anuran species, achieving a high detection accuracy rate of 95.28%. Thus, obtaining outstanding and higher values comparing to previous studies on this species. Crucially, our findings indicate that the success of PIM and the efficacy of image identification software like APHIS is dependent on the quality and standardization of the images collected. The study also underscores the importance of practical experience and continuous learning for the optimal utilization of software like APHIS. Despite occasional False Rejected Matches (FRM), the overall strong performance metrics with low False Rejection Rate (FRR) demonstrate that these instances do not significantly impact the reliability of the technique. Thus, this research highlights the importance of careful implementation, continuous learning, and image quality control in leveraging the full potential of image identification software in wildlife studies.
期刊介绍:
Published since 1929, the Canadian Journal of Zoology is a monthly journal that reports on primary research contributed by respected international scientists in the broad field of zoology, including behaviour, biochemistry and physiology, developmental biology, ecology, genetics, morphology and ultrastructure, parasitology and pathology, and systematics and evolution. It also invites experts to submit review articles on topics of current interest.