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首页> 外文期刊>Ecological indicators >hardRain: An R package for quick, automated rainfall detection in ecoacoustic datasets using a threshold-based approach
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hardRain: An R package for quick, automated rainfall detection in ecoacoustic datasets using a threshold-based approach

机译:hardRain:一种R包,使用基于阈值的方法对生态声学数据集进行快速,自动的降雨检测

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摘要

The increasing demand for cost-efficient biodiversity data at large spatiotemporal scales has led to an increase in the collection of large ecoacoustic datasets. Whilst the ease of collection and storage of audio data has rapidly increased and costs fallen, methods for robust analysis of the data have not developed so quickly. Identification and classification of audio signals to species level is extremely desirable, but reliability can be highly affected by non-target noise, especially rainfall. Despite this demand, there are few easily applicable pre-processing methods available for rainfall detection for conservation practitioners and ecologists. Here, we use threshold values of two simple measures, Power Spectrum Density (amplitude) and Signal-to-Noise Ratio at two frequency bands, to differentiate between the presence and absence of heavy rainfall. We assess the effect of using different threshold values on Accuracy and Specificity. We apply the method to four datasets from both tropical and temperate regions, and find that it has up to 99% accuracy on tropical datasets (e.g. from the Brazilian Amazon), but performs less well in temperate environments. This is likely due to the intensity of rainfall in tropical forests and its falling on dense, broadleaf vegetation amplifying the sound. We show that by choosing between different threshold values, informed trade-offs can be made between Accuracy and Specificity, thus allowing the exclusion of large amounts of audio data containing rainfall in all locations without the loss of data not containing rain. We assess the impact of using different sample sizes of audio data to set threshold values, and find that 200 15 s audio files represents an optimal trade-off between effort, accuracy and specificity in most scenarios. This methodology and accompanying R package 'hardRain' is the first automated rainfall detection tool for pre-processing large acoustic datasets without the need for any additional rain gauge data.
机译:在较大的时空尺度上,对具有成本效益的生物多样性数据的需求不断增长,导致大型生态声数据集的收集有所增加。尽管音频数据的收集和存储的简便性迅速增加并且成本降低了,但是用于数据的可靠分析的方法还没有发展得如此迅速。极其需要将音频信号识别和分类到物种级别,但是可靠性会受到非目标噪声(尤其是降雨)的高度影响。尽管有这样的需求,但是对于保护从业者和生态学家而言,很少有可用于雨水检测的简便适用的预处理方法。在这里,我们使用两个简单测量的阈值,即两个频带上的功率谱密度(幅度)和信噪比,来区分是否存在强降雨。我们评估使用不同阈值对准确性和特异性的影响。我们将该方法应用于热带和温带地区的四个数据集,发现该方法对热带数据集(例如来自巴西亚马逊的数据集)具有高达99%的准确性,但在温带环境下表现不佳。这可能是由于热带森林中的降雨强度以及降雨落在茂密的阔叶植被上而放大了声音。我们表明,通过在不同阈值之间进行选择,可以在准确性和特异性之间做出明智的权衡,从而允许在所有位置排除大量包含降雨的音频数据,而不会丢失不含降雨的数据。我们评估了使用不同音频数据样本大小设置阈值的影响,发现在大多数情况下,200个15秒的音频文件代表了努力,准确性和特异性之间的最佳折衷。这种方法和随附的R包“ hardRain”是第一个自动降雨检测工具,用于预处理大型声学数据集,而无需任何其他雨量计数据。

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