Healthy and Anomalous Beehives Classification Model using Convolutional Neural Networks

Tomás Child, G. Acuña
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Abstract

One of the main problems in chilean beekeeping is the late diseases diagnosis that affects beehives. In this work, convolutional neuronal networks are used to create a system that detect beehives health by classifying the sound they emit represented by spectrograms. A dataset is made from audio registers recorded in Chile. From this data, two models for beehives classification are elaborated with different architectures. The model implemented through Transfer Learning obtains a high percentage of accuracy (0.9303 in validation) at classifying recordings according to their health condition, which is comparable to other related publications about Machine Learning applied in beekeeping.
基于卷积神经网络的健康与异常蜂箱分类模型
智利养蜂业的主要问题之一是影响蜂箱的晚期疾病诊断。在这项工作中,卷积神经网络被用来创建一个系统,通过对蜂箱发出的声音进行分类来检测蜂箱的健康状况。一个数据集是由在智利录制的音频寄存器组成的。在此基础上,提出了两种结构不同的蜂箱分类模型。通过迁移学习实现的模型在根据健康状况对录音进行分类方面获得了很高的准确率(验证为0.9303),这与其他有关机器学习在养蜂中的应用的相关出版物相当。
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