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Comparison of semiautomated bird song recognition with manual detection of recorded bird song samples

机译:半自动鸟类歌曲识别与手动检测已记录鸟类歌曲样本的比较

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Automated recording units are increasingly being used to sample wildlife populations. These devices can produce large amounts of data that are difficult to process manually. However, the information in the recordings can be summarized with semiautomated sound recognition software. Our objective was to assess the utility of the semiautomated bird song recognizers to produce data useful for conservation and sustainable forest management applications. We compared detection data generated from expert-interpreted recordings of bird songs collected with automated recording units and data derived from a semiautomated recognition process. We recorded bird songs at 109 sites in boreal forest in 2013 and 2014 using automated recording units. We developed bird-song recognizers for 10 species using Song Scope software (Wildlife Acoustics) and each recognizer was used to scan a set of recordings that was also interpreted manually by an expert in birdsong identification. We used occupancy models to estimate the detection probability associated with each method. Based on these detection probability estimates we produced cumulative detection probability curves. In a second analysis we estimated detection probability of bird song recognizers using multiple 10-minute recordings for a single station and visit (35–63, 10-minute recordings in each of four one-week periods). Results show that the detection probability of most species from single 10-min recordings is substantially higher using expert-interpreted bird song recordings than using the song recognizer software. However, our results also indicate that detection probabilities for song recognizers can be significantly improved by using more than a single 10-minute recording, which can be easily done with little additional cost with the automate procedure. Based on these results we suggest that automated recording units and song recognizer software can be valuable tools to estimate detection probability and occupancy of boreal forest birds, when sampling for sufficiently long periods.
机译:自动化的记录单位越来越多地用于对野生动植物种群进行采样。这些设备会产生大量难以手动处理的数据。但是,可以使用半自动声音识别软件来总结录音中的信息。我们的目标是评估半自动鸟鸣识别器的效用,以产生可用于保护和可持续森林管理应用的数据。我们比较了由专家解释的鸟声(使用自动记录单元收集)产生的检测数据和半自动识别过程得到的数据。我们在2013年和2014年使用自动化录音装置在北方森林的109个地点录制了鸟类歌曲。我们使用Song Scope软件(Wildlife Acoustics)开发了10种鸟类的鸟类识别器,每个识别器都用于扫描一组记录,这些记录也由鸟类识别专家手动解释。我们使用占用模型来估计与每种方法相关的检测概率。基于这些检测概率估计,我们生成了累积检测概率曲线。在第二项分析中,我们使用单个站和访问的多个10分钟记录来估计鸟类歌曲识别器的检测概率(在四个一周的时间段中,每个记录中有35-63个10分钟记录)。结果表明,使用专家解释的鸟类歌曲录音,相比于使用歌曲识别器软件,单个10分钟录音中大多数物种的检测概率要高得多。但是,我们的结果还表明,通过使用10分钟以上的单次录音,可以大大提高歌曲识别器的检测概率,而使用自动过程可以很容易地以很少的额外成本完成录音。根据这些结果,我们建议,当进行足够长时间的采样时,自动记录单元和歌曲识别器软件可以成为评估北方森林鸟类的检测概率和占用率的有价值的工具。

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