Bridging Domain Gaps for Fine-Grained Moth Classification Through Expert-Informed Adaptation and Foundation Model Priors
By: Ross J Gardiner , Guillaume Mougeot , Sareh Rowlands and more
Potential Business Impact:
Helps scientists easily identify moths from photos.
Labelling images of Lepidoptera (moths) from automated camera systems is vital for understanding insect declines. However, accurate species identification is challenging due to domain shifts between curated images and noisy field imagery. We propose a lightweight classification approach, combining limited expert-labelled field data with knowledge distillation from the high-performance BioCLIP2 foundation model into a ConvNeXt-tiny architecture. Experiments on 101 Danish moth species from AMI camera systems demonstrate that BioCLIP2 substantially outperforms other methods and that our distilled lightweight model achieves comparable accuracy with significantly reduced computational cost. These insights offer practical guidelines for the development of efficient insect monitoring systems and bridging domain gaps for fine-grained classification.
Similar Papers
BotaCLIP: Contrastive Learning for Botany-Aware Representation of Earth Observation Data
CV and Pattern Recognition
Teaches computers to understand nature from pictures.
Trade-offs in Cross-Domain Generalization of Foundation Model Fine-Tuned for Biometric Applications
CV and Pattern Recognition
Makes face recognition better, but worse at other things.
BeetleVerse: A Study on Taxonomic Classification of Ground Beetles
CV and Pattern Recognition
Helps computers identify beetle species from photos.