Abstract
Automated classification of animal vocalisations is a potentially powerful wildlife monitoring tool. Training robust classifiers requires sizable annotated datasets, which are not easily recorded in the wild. To circumvent this problem, we recorded four primate species under semi-natural conditions in a wildlife sanctuary in Cameroon with the objective to train a classifier capable of detecting species in the wild. Here, we introduce the collected dataset, describe our approach and initial results
of classifier development. To increase the efficiency of the annotation process, we condensed the recordings with an energy/change based automatic vocalisation detection. Segmenting the annotated chunks into training, validation and test sets, initial results reveal up to 82% unweighted average recall test set performance in four-class primate species classification.
of classifier development. To increase the efficiency of the annotation process, we condensed the recordings with an energy/change based automatic vocalisation detection. Segmenting the annotated chunks into training, validation and test sets, initial results reveal up to 82% unweighted average recall test set performance in four-class primate species classification.
Original language | English |
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Pages | 466-470 |
Number of pages | 5 |
DOIs | |
Publication status | Published - 30 Aug 2021 |
Event | INTERSPEECH 2021 - Brno, Czech Republic Duration: 30 Aug 2021 → 3 Sept 2021 https://www.interspeech2021.org/ |
Conference
Conference | INTERSPEECH 2021 |
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Abbreviated title | INTERSPEECH 2021 |
Country/Territory | Czech Republic |
City | Brno |
Period | 30/08/21 → 3/09/21 |
Internet address |
Bibliographical note
Funding Information:This research was funded by the focus area Applied Data Science at Utrecht University, The Netherlands.
Publisher Copyright:
Copyright © 2021 ISCA.
Keywords
- Acoustic primate classification
- Computational paralinguistics
- Wildlife monitoring