2019
DOI: 10.3897/biss.3.36589
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Towards the Acoustic Monitoring of Birds Migrating at Night

Abstract: Every year billions of birds migrate between their breeding and wintering areas. As birds are an important indicator in nature conservation, migratory bird studies have been conducted for many decades, mostly by bird-ringing programmes and direct observation. However, most birds migrate at night, and therefore much information about their migration is lost. Novel methods have been developed to overcome this difficulty; including thermal imaging, radar, geolocation techniques, and acoustic recognition of bird c… Show more

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Cited by 8 publications
(6 citation statements)
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“…There were only two studies for which transfer learning did not improve results as opposed to training the CNN from randomly initialised weights (Morgan and Braasch, 2021;Pamula et al, 2020). There are also studies in the literature for which the authors implement their own CNN from randomly initialised weights and do not make use of transfer learning (Ruff et al, 2020;Dufourq et al, 2021;Nolasco et al, 2019) and other studies for which the authors make use of existing architectures but did not use transfer learning (Bergler et al, 2019;Jiang et al, 2019).…”
Section: Related Literaturementioning
confidence: 99%
“…There were only two studies for which transfer learning did not improve results as opposed to training the CNN from randomly initialised weights (Morgan and Braasch, 2021;Pamula et al, 2020). There are also studies in the literature for which the authors implement their own CNN from randomly initialised weights and do not make use of transfer learning (Ruff et al, 2020;Dufourq et al, 2021;Nolasco et al, 2019) and other studies for which the authors make use of existing architectures but did not use transfer learning (Bergler et al, 2019;Jiang et al, 2019).…”
Section: Related Literaturementioning
confidence: 99%
“…Deep learning holds enormous promise for automating the labelling of bioacoustic data. The number of applications is growing (Christin et al., 2019), but the majority of datasets are still labelled manually (Fairbrass et al., 2019; Kiskin et al., 2020; Pamula et al., 2019), even as the rate of data collection makes this approach increasingly unsustainable. The mismatch between the potential of deep learning approaches and their actual uptake among practitioners occurs because getting models to perform as well as an experienced human is difficult.…”
Section: Introductionmentioning
confidence: 99%
“…Likewise, in the spatial domain, North American passerines cover a territory of about 10 13 square meters yet their flight calls can only be heard over an area of about 10 4 square meters [18, 26]. The gap between these orders of magnitude implies that bioacoustic sensor networks for bird migration monitoring cannot realistically seek an exhaustive acquisition of all flight calls from Passeriformes [27]. Although they can provide relevant information about species abundance on their own, their ultimate purpose is to serve a complementary source of information to radar aeroecology and crowdsourced observations [28].…”
Section: Introductionmentioning
confidence: 99%