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Experimentally derived detection distances from audio recordings and human observers enable integrated analysis of point count data

机译:通过实验得出的录音和人类观察者的检测距离可以对点计数数据进行综合分析

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Point counts are one of the most commonly used methods for assessing bird abundance. Autonomous recording units (ARUs) are increasingly being used as a replacement for human-based point counts. Previous studies have compared the relative benefits of human versus ARU-based point count methods, primarily with the goal of understanding differences in species richness and the abundance of individuals over an unlimited distance. What has not been done is an evaluation of how to standardize these two types of data so that they can be compared in the same analysis, especially when there are differences in the area sampled. We compared detection distances between human observers in the field and four commercially available recording devices (Wildlife Acoustics SM2, SM3, RiverForks, and Zoom H1) by simulating vocalizations of various avian species at different distances and amplitudes. We also investigated the relationship between sound amplitude and detection to simplify ARU calibration. We used these data to calculate correction factors that can be used to standardize detection distances of ARUs relative to each other and human observers. In general, humans in the field could detect sounds at greater distances than an ARU although detectability varied depending on species song characteristics. We provide correction factors for four commonly used ARUs and propose methods for calibrating ARUs relative to each other and human observers.
机译:点数是评估鸟的丰度最常用的方法之一。自主记录单元(ARU)越来越多地被用来替代基于人的点数。先前的研究已经比较了人类与基于ARU的点计数方法的相对优势,主要目的是了解物种丰富度的差异以及无限距离内个体的丰度。还没有评估如何标准化这两种类型的数据,以便可以在同一分析中对它们进行比较,尤其是在采样面积存在差异的情况下。我们通过模拟不同距离和振幅下各种鸟类的发声,比较了现场人类观察者与四种商用记录设备(Wildlife Acoustics SM2,SM3,RiverForks和Zoom H1)之间的检测距离。我们还研究了声音振幅和检测之间的关系,以简化ARU校准。我们使用这些数据来计算校正因子,这些校正因子可用于标准化ARU相对于彼此和人类观察者的检测距离。一般而言,尽管可检测性根据物种歌曲的特性而变化,但在野外,人类可以检测到比ARU更大距离的声音。我们提供了四个常用ARU的校正因子,并提出了相对于彼此和人类观察者校准ARU的方法。

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