QueenBuzz: A CNN-based architecture for Sound Processing of Queenless Beehive Towards European Apis Mellifera Bee Colonies' Survivability

Alexander D. Maralit, Alexel A. Imperial, Rinoa T. Cayangyang, Jose B. Tan, Roselyn A. Maaño, Rodrigo C. Belleza, P. J. D. de Castro, David Eric S. Oreta
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Abstract

Honeybee colonies missing their queens are more likely to swarm and experience a fall in population. Bee growers in the Philippines still utilize traditional methods to determine the health of a hive. Traditional methods lead to difficulties if a hive goes without a queen for an extended period. The study focuses on how sound data may be used as input to a CNN-based architecture to determine whether a beehive has a queen. The research involves preparing audio files for conversion into a spectrogram, converting audio data into a spectrogram, converting the spectrogram into a Mel frequency cepstral coefficient, constructing and training a model for a feature based on the features of the spectrogram that is provided, and, as the last step, assessing the model with audio files that are different from the data used in the study. The study employs four CNN-based architectures for the training and evaluating of the model containing audio recordings taken from various beehives, each of which either lacked a queen or had one present. The simplified CNN model has an accuracy of 99.88% when predicting the sound of a queen-right hive, and it has an accuracy of 99.72% when predicting the sound of a queen-less hive.
QueenBuzz:一个基于cnn的架构,用于对欧洲Apis Mellifera蜂群的生存能力进行无蜂王蜂巢的声音处理
失去蜂王的蜂群更有可能蜂拥而至,数量下降。菲律宾的养蜂人仍然使用传统方法来确定蜂箱的健康状况。如果一个蜂房长时间没有蜂王,传统的方法会导致困难。这项研究的重点是如何将声音数据作为输入输入到基于cnn的架构中,以确定蜂巢是否有蜂王。研究包括准备音频文件转换为频谱图,将音频数据转换为频谱图,将频谱图转换为Mel频率倒谱系数,根据提供的频谱图特征构建并训练特征模型,最后使用与研究数据不同的音频文件对模型进行评估。该研究采用了四种基于cnn的架构来训练和评估模型,该模型包含来自不同蜂箱的音频记录,每个蜂箱要么缺少蜂王,要么有蜂王。简化后的CNN模型在预测右蜂王的声音时准确率为99.88%,在预测无蜂王的声音时准确率为99.72%。
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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