Degradation-based augmented training for robust individual animal re-identification
Thanos Polychronou, Luk\'a\v{s} Adam, Viktor Penchev, and Kostas Papafitsoros

TL;DR
This paper proposes a novel augmented training method that applies artificial degradations to improve the robustness of deep learning models for wildlife re-identification, significantly enhancing accuracy on degraded images across multiple species.
Contribution
It introduces a degradation-based augmented training framework for deep feature extractors, improving re-identification performance on degraded wildlife images and providing new benchmarks and datasets.
Findings
Up to 8.5% increase in Rank-1 accuracy on real-world degraded images.
Performance varies across species and degradation types.
Augmented training benefits even unseen individuals.
Abstract
Wildlife re-identification aims to recognise individual animals by matching query images to a database of previously identified individuals, based on their fine-scale unique morphological characteristics. Current state-of-the-art models for multispecies re- identification are based on deep metric learning representing individual identities by fea- ture vectors in an embedding space, the similarity of which forms the basis for a fast automated identity retrieval. Yet very often, the discriminative information of individual wild animals gets significantly reduced due to the presence of several degradation factors in images, leading to reduced retrieval performance and limiting the downstream eco- logical studies. Here, starting by showing that the extent of this performance reduction greatly varies depending on the animal species (18 wild animal datasets), we introduce an augmented…
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Taxonomy
TopicsWildlife Ecology and Conservation · Advanced Neural Network Applications · Animal Vocal Communication and Behavior
