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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >The use of acoustic indices to determine avian species richness in audio-recordings of the environment
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The use of acoustic indices to determine avian species richness in audio-recordings of the environment

机译:使用声学指数确定环境录音中禽类的丰富度

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Interpreting acoustic recordings of the natural environment is an increasingly important technique for ecologists wishing to monitor terrestrial ecosystems. Technological advances make it possible to accumulate many more recordings than can be listened to or interpreted, thereby necessitating automated assistance to identify elements in the soundscape. In this paper we examine the problem of estimating avian species richness by sampling from very long acoustic recordings.We work with data recorded under natural conditions and with all the attendant problems of undefined and unconstrained acoustic content (such as wind, rain, traffic, etc.) which canmask content of interest (in our case, bird calls). We describe 14 acoustic indices calculated at one minute resolution for the duration of a 24 hour recording. An acoustic index is a statistic that summarizes some aspect of the structure and distribution of acoustic energy and information in a recording. Some of the indices we calculate are standard (e.g. signal-to-noise ratio), some have been reported useful for the detection of bioacoustic activity (e.g. temporal and spectral entropies) and some are directed to avian sources (spectral persistence of whistles). We rank the one minute segments of a 24 hour recording in descending order according to an “acoustic richness” score which is derived from a single index or a weighted combination of two or more.We describe combinations of indices which lead to more efficient estimates of species richness than random sampling from the same recording, where efficiency is defined as total species identified for given listening effort. Using random sampling, we achieve a 53% increase in species recognized over traditional field surveys and an increase of 87% using combinations of indices to direct the sampling. We also demonstrate how combinations of the same indices can be used to detect long duration acoustic events (such as heavy rain and cicada chorus) and to construct long duration (24 h) spectrograms.
机译:对于希望监视陆地生态系统的生态学家来说,解释自然环境的录音是一种越来越重要的技术。技术的进步使得积累的录音量可能超出听或解释的数量,从而需要自动辅助来识别音景中的元素。在本文中,我们研究了通过从很长的声音记录中进行采样来估算鸟类物种丰富度的问题。我们处理的是在自然条件下记录的数据以及所有伴随的不确定且不受限制的声音内容(例如风,雨,交通等)的问题。)可以掩盖您感兴趣的内容(在我们的情况下为鸟叫)。我们描述了在24小时录音过程中以一分钟的分辨率计算出的14个声学指数。声指数是一种统计信息,它总结了录音中声能和信息的结构以及分布的某些方面。我们计算出的一些指标是标准指标(例如信噪比),据报道有些指标可用于检测生物声活动(例如时间和频谱熵),还有一些指标是针对禽类来源(口哨的光谱持久性)。我们根据从单个指数或两个或多个指数的加权组合得出的“声音丰富度”得分,将24小时录音的一分钟片段按降序排列。我们描述了指数的组合,可以更有效地估算物种丰富度要高于来自同一录音的随机采样,其中效率定义为在给定聆听努力下确定的总物种。使用随机抽样,与传统的田间调查相比,我们实现了53%的物种识别,使用索引组合指导抽样的数量增加了87%。我们还演示了如何使用相同指标的组合来检测长时间的声事件(例如大雨和蝉合唱)并构建长时间(24小时)的声谱图。

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