BioDCASE 2026 Challenge Baseline for Cross-Domain Mosquito Species Classification
Yuanbo Hou, Vanja Zdravkovic, Marianne Sinka, Yunpeng Li, Wenwu Wang, Mark D. Plumbley, Kathy Willis, Stephen Roberts

TL;DR
This paper introduces a baseline system for the BioDCASE 2026 challenge, focusing on cross-domain mosquito species classification using audio recordings, highlighting the challenges of domain generalization in real-world conditions.
Contribution
It provides a fully reproducible baseline system with a multitemporal CNN for cross-domain mosquito species classification, emphasizing the importance of domain generalization.
Findings
Strong performance on seen domains
Significant performance drop on unseen domains
Highlights cross-domain generalization as key challenge
Abstract
Mosquito-borne diseases affect more than one billion people each year and cause close to one million deaths. Traditional surveillance methods rely on traps and manual identification that are slow, labor-intensive, and difficult to scale. Audio-based mosquito monitoring offers a non-destructive, lower-cost, and more scalable complement to trap-based surveillance, but reliable species classification remains difficult under real-world recording conditions. Mosquito flight tones are narrow-band, often low in signal-to-noise ratio, and easily masked by background noise, and recordings for several epidemiologically relevant species remain limited, creating pronounced class imbalance. Variation across devices, environments, and collection protocols further increases the difficulty of robust classification. Such variation can cause models to rely on domain-specific recording artefacts rather…
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Taxonomy
TopicsAnimal Vocal Communication and Behavior · Music and Audio Processing · Digital Imaging for Blood Diseases
