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首页> 外文期刊>Applied Acoustics >Automatic bird sound detection in long real-field recordings: Applications and tools
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Automatic bird sound detection in long real-field recordings: Applications and tools

机译:长时间现场录音中的鸟声音自动检测:应用程序和工具

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摘要

The primary purpose for pursuing this research is to present a modular approach that enables reliable automatic bird species identification on the basis of their sound emissions in the field. A practical and complete computer-based framework is proposed to detect and time-stamp particular bird species in continuous real field recordings. Acoustic detection of avian sounds can be used for the automatized monitoring of multiple bird taxa and querying in long-term recordings for species of interest for researchers, conservation practitioners, and decision makers, such as environmental indicator taxa and threatened species. This work describes two novel procedures and offers an open modular framework that detects and time-stamps online calls and songs of target bird species and is fast enough to report results in reasonable time for non-processed field recordings of many thousands files and is generic enough to accommodate any species. The framework is evaluated on two large corpora of real field data, targeting the calls and songs of American Robin Turdus migratorius, a Northamerican oscine passerine (true songbird) and the Common Kingfisher Alcedo atthis, a non-passerine species with a wide distribution throughout Eurasia and North Africa. With the aim of promoting the widespread use of digital autonomous recording units (ARUs) and species recognition technologies the processing code and a large corpus of audio recordings is provided in order to enable other researchers to perform and assess comparative experiments.
机译:进行这项研究的主要目的是提出一种模块化方法,该方法能够根据野外的声音发射情况对可靠的鸟类进行自动识别。提出了一种实用且完整的基于计算机的框架,用于在连续的实时记录中检测特定鸟类并为其添加时间戳。鸟类声音的声音检测可用于自动监视多个鸟类类群,并在长期记录中查询研究人员,保护从业人员和决策者感兴趣的物种,例如环境指标类群和受威胁物种。这项工作描述了两个新颖的过程,并提供了一个开放的模块化框架,该框架可以检测并标记目标鸟类的在线呼叫和歌曲,并具有足够的速度以在合理的时间内报告结果,以处理数千个文件的未经处理的现场记录,并且足够通用容纳任何物种。该框架以两个大型实地数据集进行了评估,针对的是美国知更鸟迁移者(北美知音鸟er鱼(真正的鸣禽)和翠鸟普通翠鸟)的电话和歌曲,这是一种在整个欧亚大陆分布较广的非-鸟物种和北非。为了促进数字自主记录单元(ARU)和物种识别技术的广泛使用,提供了处理代码和大量音频记录,以使其他研究人员能够执行和评估比较实验。

著录项

  • 来源
    《Applied Acoustics》 |2014年第6期|1-9|共9页
  • 作者单位

    Department of Music Technology & Acoustics, Technological Educational Institute of Crete, E. Daskalaki, Perivolia, Rethymno 74100, Crete, Greece;

    Department of Electronics & Information, Polytechnic of Milano, Italy;

    Zoological Research Museum Alexander Koenig, 53113 Bonn, Germany;

    Zoological Research Museum Alexander Koenig, 53113 Bonn, Germany;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Birdsong detection; Bird recognition; Computational ecology;

    机译:鸟鸣检测;鸟类识别;计算生态学;

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