CASE (Cluster & Analyse Sound Events)

A tool to evaluate bioacoustic studies easily and automatically
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Aggiornato 11 ago 2022

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By means of this tool it is possible to extract up to 44 features of an animal sound in different ways. In addition, the tool includes various clustering algorithms (community detection; affinity propagation; HDBSCAN and fuzzy clustering) as well as algorithms to detect similarities between signals (k-nearest-neighbor; jaccard; dynamic-time-warping) in order to effectively classify animal sounds. The tool uses a graphical user interface to allow the user to work with the software as easily and intuitively as possible.
The following algorithms were adopted:
Affinity Propagation:
Kaijun Wang (2021). Adaptive Affinity Propagation clustering (https://www.mathworks.com/matlabcentral/fileexchange/18244-adaptive-affinity-propagation-clustering), MATLAB Central File Exchange. Retrieved March 1, 2021.
Community Detection:
Athanasios Kehagias (2021). Community Detection Toolbox (https://www.mathworks.com/matlabcentral/fileexchange/45867-community-detection-toolbox), MATLAB Central File Exchange. Retrieved March 1, 2021.
HDBSCAN:
Jordan Sorokin (2021). Jorsorokin/HDBSCAN (https://github.com/Jorsorokin/HDBSCAN), GitHub. Retrieved March 1, 2021.
NMI:
Mo Chen (2021). Normalized Mutual Information (https://www.mathworks.com/matlabcentral/fileexchange/29047-normalized-mutual-information), MATLAB Central File Exchange. Retrieved March 1, 2021.
t-SNE:
Laurens van der Maaten & Geoffrey Hinton
https://lvdmaaten.github.io/tsne/

Cita come

Schneider, Sebastian, et al. “Introducing the Software CASE (Cluster and Analyze Sound Events) by Comparing Different Clustering Methods and Audio Transformation Techniques Using Animal Vocalizations.” Animals, vol. 12, no. 16, MDPI AG, Aug. 2022, p. 2020, doi:10.3390/ani12162020.

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Compatibilità della release di MATLAB
Creato con R2020a
Compatibile con R2020a e release successive
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CASE(Cluster_and_Analyse_Sound_Events)

CASE(Cluster_and_Analyse_Sound_Events)/Community_detection/ComDetTBv090

CASE(Cluster_and_Analyse_Sound_Events)/Community_detection/ComDetTBv090/Algorithms

CASE(Cluster_and_Analyse_Sound_Events)/Community_detection/ComDetTBv090/Auxiliary

CASE(Cluster_and_Analyse_Sound_Events)/Community_detection/ComDetTBv090/ClusterValidity

CASE(Cluster_and_Analyse_Sound_Events)/Community_detection/ComDetTBv090/Cluster_Number

CASE(Cluster_and_Analyse_Sound_Events)/Community_detection/ComDetTBv090/Evaluation

CASE(Cluster_and_Analyse_Sound_Events)/Community_detection/ComDetTBv090/Experiments

CASE(Cluster_and_Analyse_Sound_Events)/Community_detection/ComDetTBv090/Graphs

CASE(Cluster_and_Analyse_Sound_Events)/HDBSCAN/source

CASE(Cluster_and_Analyse_Sound_Events)/HDBSCAN/source/functions

CASE(Cluster_and_Analyse_Sound_Events)/ap_cluster

CASE(Cluster_and_Analyse_Sound_Events)/nmi

CASE(Cluster_and_Analyse_Sound_Events)/t-SNE

Versione Pubblicato Note della release
1.2.1

citation has been adjusted

1.2.0

Some acoustic features have been renamed
Fixed a bug that prevented loading a single vocalization into the software.

1.1.0

Now includes the ability to create cochleagrams and mel spectrograms.

1.0.0