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Graph-Based Audio Classification Using Pre-Trained Models and Graph Neural Networks
by
Castro-Ospina, Andrés Eduardo
, Vega-Escobar, Laura Stella
, Isaza, Claudia
, Solarte-Sanchez, Miguel Angel
, Martínez-Vargas, Juan David
in
Acoustics
/ Artificial intelligence
/ Classification
/ ecoacoustics
/ environmental sound classification
/ graph neural networks
/ graph representation learning
/ Graph representations
/ Neighborhoods
/ Neural networks
/ node classification
/ Performance evaluation
/ pre-trained models
/ Social networks
/ Technology application
2024
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Graph-Based Audio Classification Using Pre-Trained Models and Graph Neural Networks
by
Castro-Ospina, Andrés Eduardo
, Vega-Escobar, Laura Stella
, Isaza, Claudia
, Solarte-Sanchez, Miguel Angel
, Martínez-Vargas, Juan David
in
Acoustics
/ Artificial intelligence
/ Classification
/ ecoacoustics
/ environmental sound classification
/ graph neural networks
/ graph representation learning
/ Graph representations
/ Neighborhoods
/ Neural networks
/ node classification
/ Performance evaluation
/ pre-trained models
/ Social networks
/ Technology application
2024
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Do you wish to request the book?
Graph-Based Audio Classification Using Pre-Trained Models and Graph Neural Networks
by
Castro-Ospina, Andrés Eduardo
, Vega-Escobar, Laura Stella
, Isaza, Claudia
, Solarte-Sanchez, Miguel Angel
, Martínez-Vargas, Juan David
in
Acoustics
/ Artificial intelligence
/ Classification
/ ecoacoustics
/ environmental sound classification
/ graph neural networks
/ graph representation learning
/ Graph representations
/ Neighborhoods
/ Neural networks
/ node classification
/ Performance evaluation
/ pre-trained models
/ Social networks
/ Technology application
2024
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Graph-Based Audio Classification Using Pre-Trained Models and Graph Neural Networks
Journal Article
Graph-Based Audio Classification Using Pre-Trained Models and Graph Neural Networks
2024
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Overview
Sound classification plays a crucial role in enhancing the interpretation, analysis, and use of acoustic data, leading to a wide range of practical applications, of which environmental sound analysis is one of the most important. In this paper, we explore the representation of audio data as graphs in the context of sound classification. We propose a methodology that leverages pre-trained audio models to extract deep features from audio files, which are then employed as node information to build graphs. Subsequently, we train various graph neural networks (GNNs), specifically graph convolutional networks (GCNs), GraphSAGE, and graph attention networks (GATs), to solve multi-class audio classification problems. Our findings underscore the effectiveness of employing graphs to represent audio data. Moreover, they highlight the competitive performance of GNNs in sound classification endeavors, with the GAT model emerging as the top performer, achieving a mean accuracy of 83% in classifying environmental sounds and 91% in identifying the land cover of a site based on its audio recording. In conclusion, this study provides novel insights into the potential of graph representation learning techniques for analyzing audio data.
Publisher
MDPI AG
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