Compensating class imbalance for acoustic chimpanzee detection with convolutional recurrent neural networks

Automatic detection systems are important in passive acoustic monitoring (PAM) systems, as these record large amounts of audio data which are infeasible for humans to evaluate manually. In this paper we evaluated methods for compensating class imbalance for deep-learning based automatic detection of...

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Bibliographic Details
Main Authors: Anders, F. (Author), Fuchs, M. (Author), Kalan, A.K (Author), Kühl, H.S (Author)
Format: Article
Language:English
Published: Elsevier B.V. 2021
Subjects:
Online Access:View Fulltext in Publisher
LEADER 02426nam a2200301Ia 4500
001 10.1016-j.ecoinf.2021.101423
008 220427s2021 CNT 000 0 und d
020 |a 15749541 (ISSN) 
245 1 0 |a Compensating class imbalance for acoustic chimpanzee detection with convolutional recurrent neural networks 
260 0 |b Elsevier B.V.  |c 2021 
856 |z View Fulltext in Publisher  |u https://doi.org/10.1016/j.ecoinf.2021.101423 
520 3 |a Automatic detection systems are important in passive acoustic monitoring (PAM) systems, as these record large amounts of audio data which are infeasible for humans to evaluate manually. In this paper we evaluated methods for compensating class imbalance for deep-learning based automatic detection of acoustic chimpanzee calls. The prevalence of chimpanzee calls in natural habitats is very rare, i.e. databases feature a heavy imbalance between background and target calls. Such imbalances can have negative effects on classifier performances. We employed a state-of-the-art detection approach based on convolutional recurrent neural networks (CRNNs). We extended the detection pipeline through various stages for compensating class imbalance. These included (1) spectrogram denoising, (2) alternative loss functions, and (3) resampling. Our key findings are: (1) spectrogram denoising operations significantly improved performance for both target classes, (2) standard binary cross entropy reached the highest performance, and (3) manipulating relative class imbalance through resampling either decreased or maintained performance depending on the target class. Finally, we reached detection performances of 33%F1 for drumming and 5%F1 for vocalization, which is a >7 fold increase compared to previously published results. We conclude that supporting the network to learn decoupling noise conditions from foreground classes is of primary importance for increasing performance. © 2021 Elsevier B.V. 
650 0 4 |a artificial neural network 
650 0 4 |a Bioacoustics 
650 0 4 |a calling behavior 
650 0 4 |a CRNN 
650 0 4 |a detection method 
650 0 4 |a Drumming 
650 0 4 |a Imbalance 
650 0 4 |a monitoring 
650 0 4 |a Pan troglodytes 
650 0 4 |a Pan troglodytes 
650 0 4 |a Pant-hoot 
700 1 |a Anders, F.  |e author 
700 1 |a Fuchs, M.  |e author 
700 1 |a Kalan, A.K.  |e author 
700 1 |a Kühl, H.S.  |e author 
773 |t Ecological Informatics