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Multimodal audio-visual information fusion using canonical-correlated Graph Neural Network for energy-efficient speech enhancement.

Authors :
Passos, Leandro A.
Papa, João Paulo
Del Ser, Javier
Hussain, Amir
Adeel, Ahsan
Source :
Information Fusion. Feb2023, Vol. 90, p1-11. 11p.
Publication Year :
2023

Abstract

This paper proposes a novel multimodal self-supervised architecture for energy-efficient audio-visual (AV) speech enhancement that integrates Graph Neural Networks with canonical correlation analysis (CCA-GNN). The proposed approach lays its foundations on a state-of-the-art CCA-GNN that learns representative embeddings by maximizing the correlation between pairs of augmented views of the same input while decorrelating disconnected features. The key idea of the conventional CCA-GNN involves discarding augmentation-variant information and preserving augmentation-invariant information while preventing capturing of redundant information. Our proposed AV CCA-GNN model deals with multimodal representation learning context. Specifically, our model improves contextual AV speech processing by maximizing canonical correlation from augmented views of the same channel and canonical correlation from audio and visual embeddings. In addition, it proposes a positional node encoding that considers a prior-frame sequence distance instead of a feature-space representation when computing the node's nearest neighbors, introducing temporal information in the embeddings through the neighborhood's connectivity. Experiments conducted on the benchmark ChiME3 dataset show that our proposed prior frame-based AV CCA-GNN ensures a better feature learning in the temporal context, leading to more energy-efficient speech reconstruction than state-of-the-art CCA-GNN and multilayer perceptron. • Demonstrates a GNN-CCA application for energy-efficient AV speech enhancement. • Proposes a novel GNN-CCA model for self-supervised fusion of correlated features. • Proposes the prior-frame positional encoding to model temporal information in graphs. • Outperforms baselines considering both audio reconstruction and energy efficiency. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15662535
Volume :
90
Database :
Academic Search Index
Journal :
Information Fusion
Publication Type :
Academic Journal
Accession number :
159821438
Full Text :
https://doi.org/10.1016/j.inffus.2022.09.006