LGAISep 17, 2025

Queen Detection in Beehives via Environmental Sensor Fusion for Low-Power Edge Computing

arXiv:2509.14061v1h-index: 1
Originality Incremental advance
AI Analysis

This provides a scalable, non-invasive solution for large-scale beekeeping, though it is incremental as it builds on existing sensor-based monitoring approaches.

The paper tackled the problem of detecting queen bee presence in beehives by proposing a lightweight, multimodal system using environmental sensor fusion, achieving over 99% detection accuracy without audio features.

Queen bee presence is essential for the health and stability of honeybee colonies, yet current monitoring methods rely on manual inspections that are labor-intensive, disruptive, and impractical for large-scale beekeeping. While recent audio-based approaches have shown promise, they often require high power consumption, complex preprocessing, and are susceptible to ambient noise. To overcome these limitations, we propose a lightweight, multimodal system for queen detection based on environmental sensor fusion-specifically, temperature, humidity, and pressure differentials between the inside and outside of the hive. Our approach employs quantized decision tree inference on a commercial STM32 microcontroller, enabling real-time, low-power edge computing without compromising accuracy. We show that our system achieves over 99% queen detection accuracy using only environmental inputs, with audio features offering no significant performance gain. This work presents a scalable and sustainable solution for non-invasive hive monitoring, paving the way for autonomous, precision beekeeping using off-the-shelf, energy-efficient hardware.

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