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Supervised Learning Computer Vision Benchmark for Snake Species Identification From Photographs: Implications for Herpetology and Global Health
Journal article   Open access   Peer reviewed

Supervised Learning Computer Vision Benchmark for Snake Species Identification From Photographs: Implications for Herpetology and Global Health

Andrew M Durso, Gokula Krishnan Moorthy, Sharada P Mohanty, Isabelle Bolon, Marcel Salathé and Rafael Ruiz de Castañeda
Frontiers in artificial intelligence, Vol.4, pp.582110-582110
04-20-2021
PMID: 33959704

Abstract

Artificial Intelligence biodiversity crowd-sourcing epidemiology fine-grained image classification reptiles
We trained a computer vision algorithm to identify 45 species of snakes from photos and compared its performance to that of humans. Both human and algorithm performance is substantially better than randomly guessing (null probability of guessing correctly given 45 classes = 2.2%). Some species (e.g., Boa constrictor ) are routinely identified with ease by both algorithm and humans, whereas other groups of species (e.g., uniform green snakes, blotched brown snakes) are routinely confused. A species complex with largely molecular species delimitation (North American ratsnakes) was the most challenging for computer vision. Humans had an edge at identifying images of poor quality or with visual artifacts. With future improvement, computer vision could play a larger role in snakebite epidemiology, particularly when combined with information about geographic location and input from human experts.
url
https://doi.org/10.3389/frai.2021.582110View
Published (Version of record) Open

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