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Main Authors: Akhtar, Mohd Mujtaba, Phukan, Orchid Chetia, Girish, Behera, Swarup Ranjan, Nayak, Ananda Chandra, Nayak, Sanjib Kumar, Buduru, Arun Balaji, Sharma, Rajesh
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.02258
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author Akhtar, Mohd Mujtaba
Phukan, Orchid Chetia
Girish
Behera, Swarup Ranjan
Nayak, Ananda Chandra
Nayak, Sanjib Kumar
Buduru, Arun Balaji
Sharma, Rajesh
author_facet Akhtar, Mohd Mujtaba
Phukan, Orchid Chetia
Girish
Behera, Swarup Ranjan
Nayak, Ananda Chandra
Nayak, Sanjib Kumar
Buduru, Arun Balaji
Sharma, Rajesh
contents In this work, we focus on non-verbal vocal sounds emotion recognition (NVER). We investigate mamba-based audio foundation models (MAFMs) for the first time for NVER and hypothesize that MAFMs will outperform attention-based audio foundation models (AAFMs) for NVER by leveraging its state-space modeling to capture intrinsic emotional structures more effectively. Unlike AAFMs, which may amplify irrelevant patterns due to their attention mechanisms, MAFMs will extract more stable and context-aware representations, enabling better differentiation of subtle non-verbal emotional cues. Our experiments with state-of-the-art (SOTA) AAFMs and MAFMs validates our hypothesis. Further, motivated from related research such as speech emotion recognition, synthetic speech detection, where fusion of foundation models (FMs) have showed improved performance, we also explore fusion of FMs for NVER. To this end, we propose, RENO, that uses renyi-divergence as a novel loss function for effective alignment of the FMs. It also makes use of self-attention for better intra-representation interaction of the FMs. With RENO, through the heterogeneous fusion of MAFMs and AAFMs, we show the topmost performance in comparison to individual FMs, its fusion and also setting SOTA in comparison to previous SOTA work.
format Preprint
id arxiv_https___arxiv_org_abs_2506_02258
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Are Mamba-based Audio Foundation Models the Best Fit for Non-Verbal Emotion Recognition?
Akhtar, Mohd Mujtaba
Phukan, Orchid Chetia
Girish
Behera, Swarup Ranjan
Nayak, Ananda Chandra
Nayak, Sanjib Kumar
Buduru, Arun Balaji
Sharma, Rajesh
Audio and Speech Processing
Sound
In this work, we focus on non-verbal vocal sounds emotion recognition (NVER). We investigate mamba-based audio foundation models (MAFMs) for the first time for NVER and hypothesize that MAFMs will outperform attention-based audio foundation models (AAFMs) for NVER by leveraging its state-space modeling to capture intrinsic emotional structures more effectively. Unlike AAFMs, which may amplify irrelevant patterns due to their attention mechanisms, MAFMs will extract more stable and context-aware representations, enabling better differentiation of subtle non-verbal emotional cues. Our experiments with state-of-the-art (SOTA) AAFMs and MAFMs validates our hypothesis. Further, motivated from related research such as speech emotion recognition, synthetic speech detection, where fusion of foundation models (FMs) have showed improved performance, we also explore fusion of FMs for NVER. To this end, we propose, RENO, that uses renyi-divergence as a novel loss function for effective alignment of the FMs. It also makes use of self-attention for better intra-representation interaction of the FMs. With RENO, through the heterogeneous fusion of MAFMs and AAFMs, we show the topmost performance in comparison to individual FMs, its fusion and also setting SOTA in comparison to previous SOTA work.
title Are Mamba-based Audio Foundation Models the Best Fit for Non-Verbal Emotion Recognition?
topic Audio and Speech Processing
Sound
url https://arxiv.org/abs/2506.02258