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Automated species identification of frog choruses in environmental recordings using acoustic indices

机译:使用声学指数的环境记录中青蛙合唱的自动化物种

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Acoustic monitoring provides opportunities for scaling up bioacoustic study of vocal animals to greater temporal and spatial scales. However, the large amounts of audio that can be easily and efficiently collected necessitates automated methods of analysis to extract useful ecological data. Acoustic indices have been used in spectrographic visualisation of long environmental recordings to successfully identify many biological sounds from their acoustic patterns and features. In particular, the choruses of several frog species are conspicuous in these spectrogram images which suggests that acoustic indices may be useful for detecting species in automated sound classification algorithms. The aim of this study was to investigate the use of acoustic indices as predictors in classification models for automated identification of frog species in environmental sound recordings from breeding habitats in north Queensland, Australia. Three types of classification models (random forests, support vector machines and gradient boosting) were trained and validated on a data set of 3274 1-minute audio segments labelled for the presence or absence of calling of 12 target frog species, and a feature set of 11 acoustic indices calculated on frequency bins of bandwidth 43.1 Hz. Classification performance was high for all 12 target species on the validation data set held out from the labelled training data (precision range 0.90-1.00 and recall range 0.83-0.99). However, performance declined for most target species when predicting frog calling on a further test data set taken from unseen recordings from the same sites. Best prediction results on the test data were achieved for species with the most training data, indicating accuracy may be improved by increasing training data, and this method is best suited to predicting chorusing of common species.
机译:声学监测提供了将声音动物的生物学研究扩大到更大的时间和空间尺度的机会。然而,可以容易和有效地收集的大量音频需要自动分析方法以提取有用的生态数据。声学指数已用于长环境记录的光谱可视化,以成功识别来自声学模式和特征的许多生物声音。特别地,在这些频谱图中,几种青蛙物种的合作在这些频谱图中具有显着性,这表明声学指数可能用于检测自动声分类算法中的物种。本研究的目的是调查声学指数在澳大利亚北昆士兰育种栖息地的环境音响录像中的自动识别中的预测因素。培训并验证了三种类型的分类模型(随机森林,支持向量机和渐变升值),并在标有3274个1分钟的音频段的数据集上验证,标记为呼叫12个目标青蛙物种和一个特征集11在带宽43.1Hz的频率箱上计算的声学指标。所有12个目标物种的分类性能很高,验证数据集中的标签训练数据(精度范围0.90-1.00并召回范围0.83-0.99)。但是,当预测来自同一站点的看不见的录音的进一步测试数据集时,对大多数目标物种的性能下降。对于具有最大训练数据的物种实现测试数据的最佳预测结果,通过增加训练数据可以提高准确度,并且该方法最适合预测常见种类的合唱。

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