A Machine Learning Approach for Queen Bee Detection Through Remote Audio Sensing to Safeguard Honeybee Colonies

Luca Barbisan;Giovanna Turvani;Fabrizio Riente
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Abstract

Honeybees play a pivotal role in maintaining global ecosystems and agricultural productivity through their indispensable contribution to crop pollination. However, the alarming rise in honeybee mortality, attributed to various stress factors including climate change, has highlighted the urgency of implementing effective monitoring strategies. Remote sensing of beehives emerges as a promising solution, with a focus on understanding and mitigating the impacts of these stressors. Differently from other approaches proposed in the literature, this study specifically explores the potential of lightweight machine learning models and the extraction of compressed feature to enable future deployment on microcontroller devices. The experimentation involves the application of support vector machines and neural network classifiers, considering the influence of variable audio chunk durations, the utilization of different hyperparameters and combining the audio recorded in several hives and available in different datasets.
通过远程音频传感检测蜂王以保护蜜蜂群落的机器学习方法
蜜蜂在作物授粉方面做出了不可或缺的贡献,在维护全球生态系统和农业生产力方面发挥着举足轻重的作用。然而,由于包括气候变化在内的各种压力因素,蜜蜂死亡率出现了惊人的上升,这凸显了实施有效监测战略的紧迫性。蜂箱遥感是一种很有前景的解决方案,其重点是了解和减轻这些压力因素的影响。与文献中提出的其他方法不同,本研究专门探讨了轻量级机器学习模型和压缩特征提取的潜力,以便将来在微控制器设备上部署。实验涉及支持向量机和神经网络分类器的应用,考虑了不同音频块持续时间的影响、不同超参数的使用,以及将多个蜂巢中记录的音频与不同数据集中的音频相结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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