Towards automatic detection of wildlife trade using machine vision
modelsRitwik Kulkarni & Enrico Di MininBiological ConservationMarch
2023Abstract
Unsustainable trade in wildlife is one of the major threats affecting the
global biodiversity crisis. An important part of the trade now occurs on
digital marketplaces and social media. Automated methods to identify trade
posts are needed as resources for conservation are limited. Here, we
developed machine vision models based on Deep Neural Networks with the aim
to automatically identify images of exotic pet animals for sale. We trained
24 neural-net models on a newly created dataset, spanning a combination of
five different architectures, three methods of training and two types of
datasets. Model generalisation improved after setting a portion of the
training images to represent negative features. Models were evaluated on
both within and out-of-distribution data to test wider model applicability.
The top performing models achieved an f-score of over 0.95 on
within-distribution evaluation and between 0.75 and 0.87 on the two
out-of-distribution datasets (i.e., data acquired from a source unrelated
to training data), therefore, showcasing the potential application of the
model to help identify content related to the sale of threatened species on
digital platforms. Notably, feature-visualisation indicated that models
performed well in detecting the surrounding context in which an animal was
located, therefore helping to automatically detect images of animals in
non-natural environments. The proposed methods are an important step
towards automatic detection of online wildlife trade using machine vision
models and can also be adapted to study more broadly other types of online
people-nature interactions. Future studies can use these findings to build
robust machine-learning models.
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