Authors
Adrià López-Baucells, Laura Torrent, Ricardo Rocha, Paulo ED Bobrowiec, Jorge M Palmeirim, Christoph FJ Meyer
Publication date
2019/1/1
Journal
Ecological Informatics
Volume
49
Pages
45-53
Publisher
Elsevier
Description
Owing to major technological advances, bioacoustics has become a burgeoning field in ecological research worldwide. Autonomous passive acoustic recorders are becoming widely used to monitor aerial insectivorous bats, and automatic classifiers have emerged to aid researchers in the daunting task of analysing the resulting massive acoustic datasets. However, the scarcity of comprehensive reference call libraries still hampers their wider application in highly diverse tropical assemblages. Capitalizing on a unique acoustic dataset of >650,000 bat call sequences collected over a 3-year period in the Brazilian Amazon, the aims of this study were (a) to assess how pre-identified recordings of free-flying and hand-released bats could be used to train an automatic classification algorithm (random forest), and (b) to optimize acoustic analysis protocols by combining automatic classification with visual post-validation …
Total citations
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