低资源物种不可知论鸟类活动检测

Mark Anderson, J. Kennedy, N. Harte
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引用次数: 3

摘要

本文探讨了用于检测鸟类活动的低资源分类器和特征,适用于嵌入式自动记录单元,这些单元通常用于长期远程监测鸟类种群。特征包括低水平的频谱参数,在音高样本的统计矩,并从调幅导出的特征。使用NIPS4Bplus数据集在几个轻量级分类器上评估性能。我们的实验表明,随机森林分类器在这个任务上表现最好,达到了0.721的准确率和0.604的F1-Score。我们将系统的结果与基于卷积神经网络的检测器和标准MFCC特征进行比较。我们的实验表明,我们可以使用更小的计算成本和适合边缘部署的特征和模型在大多数指标上获得相同或更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low Resource Species Agnostic Bird Activity Detection
This paper explores low resource classifiers and features for the detection of bird activity, suitable for embedded Automatic Recording Units which are typically deployed for long term remote monitoring of bird populations. Features include low-level spectral parameters, statistical moments on pitch samples, and features derived from amplitude modulation. Performance is evaluated on several lightweight classifiers using the NIPS4Bplus dataset. Our experiments show that random forest classifiers perform best on this task, achieving an accuracy of 0.721 and an F1-Score of 0.604. We compare the results of our system against both a Convolutional Neural Network based detector, and standard MFCC features. Our experiments show that we can achieve equal or better performance in most metrics using features and models with a smaller computational cost and which are suitable for edge deployment.
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