Improving Underwater Acoustic Classification Through Learnable Gabor Filter Convolution and Attention Mechanisms
Lucas Cesar Ferreira Domingos, Russell Brinkworth, Paulo Eduardo Santos, Karl Sammut

TL;DR
This paper presents GSE ResNeXt, a deep learning model with learnable Gabor filters and attention mechanisms, significantly improving underwater acoustic classification accuracy and robustness, especially under limited data and complex noise conditions.
Contribution
Introduction of GSE ResNeXt, a novel architecture combining adaptive Gabor filters with attention, enhancing feature extraction and training stability for underwater acoustic classification.
Findings
GSE ResNeXt outperforms baseline models in classification accuracy.
Adding Gabor convolutions reduces training time by up to 62%.
Temporal separation impacts performance more than data volume.
Abstract
Remotely detecting and classifying underwater acoustic targets is critical for environmental monitoring and defence. However, the complexity of ship-radiated and environmental noise poses significant challenges for accurate signal processing. While recent advancements in machine learning have improved classification accuracy, limited dataset availability and a lack of standardised experimentation hinder generalisation and robustness. This paper introduces GSE ResNeXt, a deep learning architecture integrating learnable Gabor convolutional layers with a ResNeXt backbone enhanced by squeeze-and-excitation attention. The Gabor filters serve as two-dimensional adaptive band-pass filters, extending the feature channel representation. Its combination with channel attention improves training stability and convergence while enhancing the model's ability to extract discriminative features. The…
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Taxonomy
TopicsUnderwater Acoustics Research · Underwater Vehicles and Communication Systems · Wireless Signal Modulation Classification
