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Testing the performances of automated identification of bat echolocation calls: A request for prudence

机译:测试蝙蝠回声定位呼叫的自动识别性能:审慎要求

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摘要

Echolocating bats are surveyed and studied acoustically with bat detectors routinely and worldwide, yet identification of species from calls often remains ambiguous or impossible due to intraspecific call variation and/or interspecific overlap in call design. To overcome such difficulties and to reduce workload, automated classifiers of echolocation calls have become popular, but their performance has not been tested sufficiently in the field. We examined the absolute performance of two commercially available programs (SonoChiro and Kaleidoscope) and one freeware package (BatClassify). We recorded noise from rain and calls of seven common bat species with Pettersson real-time full spectrum detectors in Sweden. The programs could always (100%) distinguish rain from bat calls, usually (68-100%) identify bats to group (Nyctalus/Vespertilio/Eptesicus, Pipistrellus, Myotis, Plecotus, Barbastella) and usually (83-99%) recognize typical calls of some species whose echolocation pulses are structurally distinct (Pipistrellus pygmaeus, Barbastella barbastellus). Species with less characteristic echolocation calls were not identified reliably, including Vespertilio murinus (16-26%), Myotis spp. (4-93%) and Plecotus auritus (0-89%). All programs showed major although different shortcomings and the often poor performance raising serious concerns about the use of automated classifiers for identification to species level in research and surveys. We highlight the importance of validating output from automated classifiers, and restricting their use to specific situations where identification can be made with high confidence. For comparison we also present the result of a manual identification test on a random subset of the files used to test the programs. It showed a higher classification success but performances were still low for more problematic taxa. (C) 2017 Elsevier Ltd. All rights reserved.
机译:经常在全世界范围内使用蝙蝠探测器对有回声的蝙蝠进行声学调查和研究,但是由于种内种系变化和/或种间重叠,在种系中对种的鉴定通常仍然不明确或不可能。为了克服这些困难并减少工作量,回声定位调用的自动分类器已变得很流行,但是其性能尚未在现场进行充分测试。我们检查了两种市售程序(SonoChiro和Kaleidoscope)和一个免费软件包(BatClassify)的绝对性能。我们使用瑞典的Pettersson实时全光谱探测器记录了雨水和7种常见蝙蝠的鸣叫声。该程序始终可以(100%)将雨水与蝙蝠叫声区分开,通常(68-100%)可以将蝙蝠识别为成群(Nyctalus / Vespertilio / Eptesicus,Pipistrellus,Myotis,Plecotus,Barbastella),并且通常(83-99%)可以识别典型的蝙蝠回声定位脉冲在结构上不同的某些物种的呼唤(Pipistrellus pygmaeus,Barbastella barbastellus)。具有特征性回声定位特征较少的物种未得到可靠鉴定,包括Vespertilio murinus(16-26%),Myotis spp。 (4-93%)和耳廓吸血鬼(0-89%)。所有程序都显示出主要缺点,尽管缺点各不相同,而且通常表现不佳,这引起了人们对使用自动分类器在研究和调查中识别物种级别的严重担忧。我们强调验证自动分类器输出的重要性,并将其使用限制在可以高度自信地进行识别的特定情况下。为了进行比较,我们还介绍了对用于测试程序的文件的随机子集进行手动识别测试的结果。它显示出较高的分类成功率,但对于有更多问题的分类单元,性能仍然很低。 (C)2017 Elsevier Ltd.保留所有权利。

著录项

  • 来源
    《Ecological indicators》 |2017年第7期|416-420|共5页
  • 作者单位

    Lund Univ, Biol Dept, SE-22362 Lund, Sweden;

    Skarpskyttevagen 30D, SE-22642 Lund, Sweden;

    Krokdalsvagen 88, SE-51734 Bollebygd, Sweden;

    Univ Bristol, Sch Biol Sci, Life Sci Bldg,24 Tyndall Ave, Bristol BS8 1TQ, Avon, England;

    Univ Bristol, Sch Biol Sci, Life Sci Bldg,24 Tyndall Ave, Bristol BS8 1TQ, Avon, England|Univ Napoli Federico II, Dipartimento Agr, Wildlife Res Unit, Lab Ecol Applicata,Sez Biol & Protez Sistemi Agr, Via Univ 100, Naples, Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Biosonar; Methodology; Software; Species identification; Ultrasound;

    机译:生物声纳;方法学;软件;物种鉴定;超声;

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