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The effect of call libraries and acoustic filters on the identification of bat echolocation

机译:呼叫库和声学滤波器对蝙蝠回声定位的影响

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摘要

Quantitative methods for species identification are commonly used in acoustic surveys for animals. While various identification models have been studied extensively, there has been little study of methods for selecting calls prior to modeling or methods for validating results after modeling. We obtained two call libraries with a combined 1556 pulse sequences from 11 North American bat species. We used four acoustic filters to automatically select and quantify bat calls from the combined library. For each filter, we trained a species identification model (a quadratic discriminant function analysis) and compared the classification ability of the models. In a separate analysis, we trained a classification model using just one call library. We then compared a conventional model assessment that used the training library against an alternative approach that used the second library. We found that filters differed in the share of known pulse sequences that were selected (68 to 96%), the share of non-bat noises that were excluded (37 to 100%), their measurement of various pulse parameters, and their overall correct classification rate (41% to 85%). Although the top two filters did not differ significantly in overall correct classification rate (85% and 83%), rates differed significantly for some bat species. In our assessment of call libraries, overall correct classification rates were significantly lower (15% to 23% lower) when tested on the second call library instead of the training library. Well-designed filters obviated the need for subjective and time-consuming manual selection of pulses. Accordingly, researchers should carefully design and test filters and include adequate descriptions in publications. Our results also indicate that it may not be possible to extend inferences about model accuracy beyond the training library. If so, the accuracy of acoustic-only surveys may be lower than commonly reported, which could affect ecological understanding or management decisions based on acoustic surveys.
机译:物种识别的定量方法通常用于动物的声学调查中。尽管已经广泛研究了各种识别模型,但是很少有关于在建模之前选择呼叫的方法或在建模之后验证结果的方法的研究。我们获得了来自11个北美蝙蝠物种的1556个脉冲序列相结合的两个调用库。我们使用了四个声学过滤器来从组合库中自动选择和量化蝙蝠的鸣叫。对于每个过滤器,我们训练了一个物种识别模型(二次判别函数分析),并比较了模型的分类能力。在单独的分析中,我们仅使用一个调用库就训练了分类模型。然后,我们将使用训练库的常规模型评估与使用第二个库的替代方法进行了比较。我们发现,滤波器在选择的已知脉冲序列的份额(68%至96%),被排除的非蝙蝠噪声的份额(37%至100%),它们对各种脉冲参数的测量以及它们的总体正确性方面有所不同。分类率(41%至85%)。尽管排名靠前的两个过滤器的总体正确分类率没有显着差异(分别为85%和83%),但对于某些蝙蝠物种,其分类率却存在显着差异。在我们对呼叫库的评估中,当在第二个呼叫库而不是训练库上进行测试时,总体正确分类率要低得多(降低15%到23%)。精心设计的滤波器消除了对主观且耗时的手动脉冲选择的需求。因此,研究人员应仔细设计和测试过滤器,并在出版物中包含适当的描述。我们的结果还表明,可能无法将关于模型准确性的推论扩展到训练库之外。如果是这样,纯声学调查的准确性可能会低于通常报告的准确性,这可能会影响基于声学调查的生态理解或管理决策。

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